Do you know where your customers stand? Not literally, of course, but do you know how recent macroeconomic changes and their personal circumstances are currently affecting your portfolio? While refreshing your customers’ credit data quarterly works for some aspects of portfolio management, you need more frequent access to fresh data to quickly respond to risky customer behavior and new credit needs before your portfolio takes a hit. Use triggers to improve portfolio management Event-based credit triggers provide daily or real-time alerts about important changes in your customers’ financial situations. You can use these to manage risk by promptly responding to signs of changing creditworthiness or to prevent attrition by proactively reaching out to customers who are shopping for credit. Risk Triggers℠ and Retention Triggers℠ offer a real-time solution that can be customized to fit your needs for daily portfolio management. What are Risk Triggers? Experian’s Risk Triggers alert you of notable information, such as unfavorable utilization rate changes, delinquencies with other lenders and recent activity with high-interest, short-term loan products. This solution allows you to monitor how your customers manage accounts with other lenders to get ahead of potential risk on your book. You can use Risk Triggers to get daily insights into your customers’ activity — allowing you to quickly identify potentially risky behavior and take appropriate action to limit your exposure and losses. Types of Risk Triggers Choose from a defined Risk Triggers package that could help you identify high-risk customers, including: New trades Increasing credit utilization or balances over limit New collection accounts An account is charged-off A credit grantor closes an account New delinquency statuses (30 to 180 days past due) Consumers seeking access to short-term, high-risk financing options Bankruptcy and deceased events How to use Risk Triggers You can use the daily alerts from Risk Triggers to help inform your account management strategy. Depending on the circumstances, you might: Decrease credit limits Close or freeze accounts Accelerate payment requests Continue monitoring accounts for other signs of risk Spotlight on Experian’s Clarity Services events Included in Risk Triggers are events from Experian’s Clarity Services, which draw on expanded FCRA-regulated data* from a leading source of alternative financial credit data. For example, you could get an alert when someone has a new inquiry from non-traditional loans. These triggers provide a broader view of the customer – offering added protection against risky behavior. What are Retention Triggers? Experian’s Retention Triggers can alert you when a customer improves their creditworthiness, is shopping for new credit, opens a new tradeline or lists property. Proactively responding to these daily alerts can help you retain and strengthen relationships with your customers — which is often less expensive than acquiring new customers. Types of Retention Triggers Choose from over 100 Retention Triggers to bundle, including: New trades New inquiries Credit line increases Property listing statuses Improving delinquency status Past-due accounts are brought current or paid off How to use Retention Triggers You can use Retention Triggers to increase lifetime customer value by proactively responding to your customers’ needs and wants. You might: Increase credit limits Offer promotional financing, such as balance transfers Introduce perks or rewards to strengthen the relationship Append attributes for improved decisioning By appending credit attributes to Risk and Retention Trigger outputs, you can gain greater insight into your accounts. Premier AttributesSM is Experian's core set of 2,100-plus attributes. These can quickly summarize data from consumers' credit reports, allowing you to more easily segment accounts to make more strategic decisions across your portfolio. Trended 3DTM attributes can help you spot and understand patterns in a customer's behavior over time. Integrating trended attributes into a triggers program can help you identify risk and determine the next best action. Trended 3D includes more than 2,000 attributes and provides insights into industries such as bankcard, mortgage, student loans, personal loans, collections and much more. By working with both triggers and attributes, you'll proactively review an account, so you can then take the next best action to improve your portfolio's profits. Customize your trigger strategy When you partner with Experian, you can bundle and choose from hundreds of Risk and Retention Triggers to focus on risk, customer retention or both. Additionally, you can work with Experian’s experts to customize your trigger strategy to minimize costs and filter out repetitive or unneeded triggers: Use cool-off periods Set triggering thresholds Choose which triggers to monitor Establish hierarchies for which triggers to prioritize Create different strategies for segments of your portfolio Learn more about Risk and Retention Triggers. Learn more *Disclaimer: “Alternative Financial Credit Data” refers to the use of alternative data and its appropriate use in consumer credit lending decisions, as regulated by the Fair Credit Reporting Act. Hence, the term “Expanded FCRA-Regulated Data” may also apply in this instance, and both can be used interchangeably.
Getting customers to respond to your credit offers can be difficult. With the advent of artificial intelligence (AI) and machine learning (ML), optimizing credit prescreen campaigns has never been easier or more efficient. In this post, we'll explore the basics of prescreen and how AI and ML can enhance your strategy. What is prescreen? Prescreen involves evaluating potential customers to determine their eligibility for credit offers. This process takes place without the consumer’s knowledge and without any negative impact on their credit score. Why optimize your prescreen strategy? In today's financial landscape, having an optimized prescreen strategy is crucial. Some reasons include: Increased competition: Financial institutions face stiff competition in acquiring new customers. An optimized prescreen strategy helps you stand out by targeting the right individuals with tailored offers, increasing the chances of conversion. Customer expectations: Modern customers expect personalized and relevant offers. An effective prescreen strategy ensures that your offers resonate with the specific needs and preferences of potential customers. Strict budgets: Organizations today are faced with a limited marketing budget. By determining the right consumers for your offers, you can minimize prescreen costs and maximize the ROI of your campaigns. Regulatory compliance: Compliance with regulations such as the Fair Credit Reporting Act (FCRA) is essential. An optimized prescreen strategy helps you stay compliant by ensuring that only eligible individuals are targeted for credit offers. Financial inclusion: 49 million American adults don’t have conventional credit scores. An optimized prescreen strategy allows you to send offers to creditworthy consumers who you may have missed due to a lack of traditional credit history. How AI and ML can enhance your strategy AI and ML can revolutionize your prescreen strategy by offering advanced analytics and custom response modeling capabilities. AI-driven data analytics AI analytics allow financial institutions to analyze vast amounts of data quickly and accurately. This enables you to identify patterns and trends that may not be apparent through traditional analysis. By leveraging data-centric AI, you can gain deeper insights into customer behavior and preferences, allowing for more precise targeting and increased response rates. LEARN MORE: Explore the benefits of AI for credit unions. Custom response modeling Custom response models enable you to better identify individuals who fall within your credit criteria and are more likely to respond to your credit offers. These models consider various factors such as credit history, spending habits, and demographic information to predict future behavior. By incorporating custom response models into your prescreen strategy, you can select the best consumers to engage, including those you may have previously overlooked. LEARN MORE: AI can be leveraged for numerous business needs. Learn about generative AI fraud detection. Get started today Incorporating AI and ML into your prescreen campaigns can significantly enhance their effectiveness and efficiency. By leveraging Experian's Ascend Intelligence Services™ Target, you can better target potential customers and maximize your marketing spend. Our optimized prescreen solution leverages: Full-file credit bureau data on over 245 million consumers and over 2,100 industry-leading credit attributes. Exclusive access to the industry's largest alternative datasets from nontraditional lenders, rental data inputs, full-file public records, and more. 24 months of trended data showing payment patterns over time and over 2,000 attributes that help determine your next best action. When it comes to compliance, Experian leverages decades of regulatory experience to provide the documentation needed to explain lending practices to regulators. We use patent-pending ML explainability to understand what contributed most to a decision and generate adverse action codes directly from the model. For more insights into Ascend Intelligence Services Target, view our infographic or contact us at 855 339 3990. View infographic This article includes content created by an AI language model and is intended to provide general information.
“Learn how to learn.” One of Zack Kass’, AI futurist and one of the keynote speakers at Vision 2024, takeaways readily embodies a sentiment most of us share — particularly here at Vision. Jennifer Schulz, CEO of Experian, North America, talked about AI and transformative technologies of past and present as she kicked off Vision 2024, the 40th Vision. Keynote speaker: Dr. Mohamed El-Erian Dr. Mohamed El-Erian, President of Queens’ College, Cambridge and Chief Economic Advisor at Allianz, returned to the Vision stage to discuss the labor market, “sticky” inflation and the health of consumers. He emphasized the need to embrace and learn how to talk to AI engines and that AI can facilitate content, creation, collaboration and community Keynote speaker: Zack Kass Zack Kass, AI futurist and former Head of Go-To-Market at OpenAI, spoke about the future of work and life and artificial general intelligence. He said AI is aiding in our entering of a superlinear trajectory and compared the thresholds of technology versus those of society. Sessions – Day 1 highlights The conference hall was buzzing with conversations, discussions and thought leadership. Some themes definitely rose to the top — the increasing proliferation of fraud and how to combat it without diminishing the customer experience, leveraging AI and transformative technology in decisioning and how Experian is pioneering the GenAI era in finance and technology. Transformative technologiesAI and emerging technologies are reshaping the finance sector and it's the responsibility of today's industry leaders to equip themselves with cutting-edge strategies and a comprehensive understanding to master the rapidly evolving landscape. That said, transformation is a journey and aligning with a partner that's agile and innovative is critical. Holistic fraud decisioningGenerative AI, a resurgence of bank branch transactions, synthetic identity and pig butchering are all fraud trends that today's organizations must be acutely aware of and armed to protect their businesses and customers against. Leveraging a holistic fraud decisioning strategy is important in finding the balance between customer experience and mitigating fraud. Unlocking cashflow to grow, protect and reduce riskCash flow data can be used not only across the lending lifecycle, but also as part of assessing existing portfolio opportunities. Incorporating consumer-permissioned data into models and processes powers predicatbility and can further assess risk and help score more consumers. Navigating the economyAmid a slowing economy, consumers and businesses continue to struggle with higher interest rates, tighter credit conditions and rising delinquencies, creating a challenging environment for lenders. Experian's experts outlined their latest economic forecasts and provided actionable insights into key consumer and commercial credit trends. More insights from Vision to come. Follow @ExperianVision and @ExperianInsights to see more of the action.
Click here to watch our recent webinar on first-time homebuyers. The younger generations comprise nearly 70% of first-time homebuyers, according to recent Experian Mortgage research. Understanding the generational traits of first-time homebuyers, particularly motivated younger generations, is critical to building highly targeted marketing strategies. Gen Z and Gen Y are essential in the first-time homebuyer market and represent close to 40% of repeat buyers, indicating they consider homeownership important beyond just their first purchase. Generation Y borrowers lead the pack Generation Y borrowers see homeownership as part of the American Dream but have waited longer than previous generations to purchase their first home.1 Additionally, as digital natives, they have grown up in a world with online resources and digital tools, making the home buying process more convenient for them. They can effortlessly research homes, compare mortgage rates, and even complete paperwork without leaving their home – a time and cost-saving advantage. With their desire for stability and their technological proficiency, it comes as no surprise that Gen Y borrowers are at the forefront of the homebuying market, accounting for 52% of all first-time buyers. Keep your eye on the next wave: Generation Z borrowers Although Generation Z is the youngest group with both young adults and those entering adulthood, they should not be overlooked in the real estate market. Despite their age, Gen Z possesses characteristics and tendencies that make them legitimate potential first-time homebuyers. Having grown up in an era characterized by technical advancements and economic instability, Gen Z has observed various challenges, such as the impact of the 2008 financial crisis on their families. They have also witnessed their parents and older siblings navigating student loan debt and a volatile job market. As a result, Gen Z individuals tend to approach life decisions with a cautious mindset. However, it is important to note that Gen Z is a generation known for their ambition and determination. They have an entrepreneurial spirit. A strong desire for stability. According to a recent survey conducted by Chase2, homeownership holds an important place in the dreams of nearly 90% of Generation Z individuals. This unwavering aspiration for owning a home and increasing purchasing power establishes Generation Z as a significant influence in the real estate market. Market to each generation where they are most comfortable, for Y and Z it is online and on the go To get the attention of these younger generations, mortgage lenders must understand that for these groups, digital technology is the norm, integrated into all aspects of their lives. They rely heavily on social media, online reviews, and mobile apps for research and communication. Therefore, it is crucial for lenders to implement a marketing strategy that encompasses social media platforms and personalized email, and, increasingly, text communications, to resonate with the tech savvy nature of these generations. That said, there is nuance in every population, and we see this when observing communication preferences across generations. We know, for example, that first-time homebuyers are considerably more likely than the general public to respond to e-mail offers. Understanding communication preferences for each prospect is important for tailoring your omni-channel marketing approach. Growing up in a world where technology is constantly advancing, Generations Y and Z are accustomed to having immediate access to information and services at their fingertips. As a result, they expect an efficient mortgage lending process that uses online, smartphone-enabled tools and platforms. They count on the ability to complete applications and paperwork online, receive updates and notifications via email or text, and have access to resources and tools to track and manage their mortgage journey. Lenders embracing these realities about Gen Y and Gen Z and connecting with them where they are, will be better positioned to serve this demographic and grow their own business. For more information about the lending possibilities for first-time homebuyers, download our latest white paper. Download white paper 1 “Bank of America’s 2023 Homebuyer Insights Report Explores How Hopeful Buyers are Forging Ahead,” bankofamerica.com. 2 “Millennial and Gen Z Adults Still See American Dream Within Reach Despite Challenges,” chase.com.
Current economic conditions present genuine challenges for mortgage lenders. In this environment, first-time homebuyers offer exciting, perhaps unexpected, business growth potential. Market uncertainties have kept potential borrowers anxious and on the sidelines. The Federal Reserve's recent announcement that interest rates will remain steady for now has added to borrower anxiety. First-time homebuyers are no exception. They are concerned about the “right” time to jump in, buy a home, and own a mortgage. Despite worries over high interest rates and low inventory, many first-time homebuyers are tired of waiting for rates to drop and inventory to blossom. First-time buyers are eager to explore all avenues necessary to achieve homeownership. They show a willingness to be flexible when it comes to finding a house, considering options like a fixer upper or expanding their search to more affordable locations. The desire to escape the uncertainty and financial burden of renting is a strong driving force for first-time buyers. They see homeownership as a way to establish stability and build equity for their future. Despite the obstacles renters face in the competitive housing market, these potential buyers are motivated. Lenders who take time to understand who these buyers are and what matters to them will be ahead of the game. Notwithstanding stubbornly high interest rates, first-time homebuyers historically have shown remarkable resilience amid market fluctuations. According to a recent deep dive by Experian Mortgage experts into the buying patterns of first-time homebuyers, this group made 35-48% of all new purchases and 8-12% of all refinances between July 2022 and September 2023. First-time buyers represent both immediate potential and long-term client opportunities. How can lenders attract first-time homebuyers and drive growth from this market? The first-time homebuyer market largely consists of individuals in their early 40s and younger, also known as Gen Y and Gen Z. Rising costs of renting a home frustrate these individuals who are trying to save money for a down payment on a house and ultimately, buy their dream home. They want to settle down and look ahead to the future. For mortgage lenders who focus on understanding this younger first-time buyer market and developing targeted business strategies to attract them, great growth potential exists. Often, younger people feel locked out of buying opportunities, which creates uncertainty and apprehension about entering the market. This presents mortgage industry professionals with an incredible opportunity to show their value and grow their client base. To attract this market segment, lenders must adapt. Lenders must develop a comprehensive picture of this younger generation. Who are they? How do they shop? Where do they want to live? What is their financial situation? What are their financial and personal goals? Acknowledging difficulties in the housing market and showing them a well-conceived path forward to home ownership will win the day for the lender and the buyer. As interest rates are poised to decrease in 2024-2025, there is potential for a surge in demand from first-time homebuyers. Lenders should prepare for these potential buyers, now. It is crucial to reevaluate how to approach first-time buyers to identify new opportunities for expansion. Experian Mortgage examined first-time homebuyer trends to pinpoint prospects with good credit and provide analysis on potential areas of opportunity. For more information about the lending possibilities for first-time homebuyers, download our white paper. Download white paper
This article was updated on March 12, 2024. The number of decisions that a business must make in the marketing space is on the rise. Which audience to target, what is the best method of communication, which marketing campaign should they receive? To stay ahead, a growing number of businesses are embracing artificial intelligence (AI) analytics, machine learning, and mathematical optimization in their decisioning models and strategies. What is an optimization model? While machine learning models provide predictive insights, it’s the mathematical optimization models that provide actionable insights that drive decisioning. Optimization models factor in multiple constraints and goals to leave you with the next best steps. Each step in the optimization process can significantly improve the overall impact of your marketing outreach — for both you and your customers. Using a mathematical optimization software, you can enhance your targeting, increase response rates, lower cost per acquisition, and drive engagement. Better engagement can lead to stronger business performance and profitability. Here are a few key areas where machine learning and optimization modeling can help increase your return on investment (ROI): Prospecting: Advanced analytics and optimization can be used to better identify individuals who meet your credit criteria and are most likely to respond to your offers. Taking this customer-focused approach, you can provide the most relevant marketing messages to customers at the right time and place. Cross-sell and upsell: The same optimized targeting can be applied to increase profitability with your existing customer base in cross-sell and up-sell opportunities. Gain insights into the best offer to send to each customer, the best time to send it, and which channel the customer will respond best to. Additionally, implement logic that maintains your customer contact protocols. Retention: Employing optimization modeling in the retention stage helps you make quicker decisions in a competitive environment. Instantly identify triggers that warrant a retention offer and determine the likelihood of the customer responding to different offers. LEARN MORE: eBook: Debunking the top 5 myths about optimization Gaining insight and strengthening decisions with our solutions Experian’s suite of advanced analytics solutions, including our optimization software, can help improve your marketing strategies. Use our ROI calculator to get a personalized estimate of how optimization can lift your campaigns without additional marketing spend. Start by inputting your organization’s details below. initIframe('62e81cb25d4dbf17c7dfea55'); Learn more about how optimization modeling can help you achieve your marketing and growth goals. Learn more
This article was updated on March 6, 2024. Advances in analytics and modeling are making credit risk decisioning more efficient and precise. And while businesses may face challenges in developing and deploying new credit risk models, machine learning (ML) — a type of artificial intelligence (AI) — is paving the way for shorter design cycles and greater performance lifts. LEARN MORE: Get personalized recommendations on optimizing your decisioning strategy Limitations of traditional lending models Traditional lending models have worked well for years, and many financial institutions continue to rely on legacy models and develop new challenger models the old-fashioned way. This approach has benefits, including the ability to rely on existing internal expertise and the explainability of the models. However, there are limitations as well. Slow reaction times: Building and deploying a traditional credit risk model can take many months. That might be okay during relatively stable economic conditions, but these models may start to underperform if there's a sudden shift in consumer behavior or a world event that impacts people's finances. Fewer data sources: Traditional scoring models may be able to analyze some types of FCRA-regulated data (also called alternative credit data*), such as utility or rent payments, that appear in credit reports. Custom credit risk scores and models could go a step further by incorporating data from additional sources, such as internal data, even if they're designed in a traditional way. But AI-driven models can analyze vast amounts of information and uncover data points that are more highly predictive of risk. Less effective performance: Experian has found that applying machine learning models can increase accuracy and effectiveness, allowing lenders to make better decisions. When applied to credit decisioning, lenders see a Gini uplift of 60 to 70 percent compared to a traditional credit risk model.1 Leveraging machine learning-driven models to segment your universe From initial segmentation to sending right-sized offers, detecting fraud and managing collection efforts, organizations are already using machine learning throughout the customer life cycle. In fact, 79% are prioritizing the adoption of advanced analytics with AI and ML capabilities, while 65% believe that AI and ML provide their organization with a competitive advantage.2 While machine learning approaches to modeling aren't new, advances in computer science and computing power are unlocking new possibilities.3 Machine learning models can now quickly incorporate your internal data, alternative data, credit bureau data, credit attributes and other scores to give you a more accurate view of a consumer's creditworthiness. By more precisely scoring applicants, you can shrink the population in the middle of your score range, the segment of medium-risk applicants that are difficult to evaluate. You can then lower your high-end cutoff and raise your low-end cutoff, which may allow you to more confidently swap in good accounts (the applicants you turned down with other models that would have been good) and swap out bad accounts (those you would have approved who turned bad). Machine learning models may also be able to use additional types of data to score applicants who don't qualify for a score from traditional models. These applicants aren't necessarily riskier — there simply hasn't been a good way to understand the risk they present. Once you can make an accurate assessment, you can increase your lending universe by including this segment of previously "unscorable" consumers, which can drive revenue growth without additional risk. At the same time, you're helping expand financial inclusion to segments of the population that may otherwise struggle to access credit. READ MORE: Is Financial Inclusion Fueling Business Growth for Lenders? Connecting the model to a decision Even a machine learning model doesn't make decisions.4 The model estimates the creditworthiness of an applicant so lenders can make better-informed decisions. AI-driven credit decisioning software can take your parameters (such cutoff points) and the model's outputs to automatically approve or deny more applicants. Models that can more accurately segment and score populations will result in fewer applications going to manual review, which can save you money and improve your customers' experiences. CASE STUDY: Atlas Credit, a small-dollar lender, nearly doubled its loan approval rates while decreasing risk losses by up to 20 percent using a machine learning-powered model and increased automation. Concerns around explainability One of the primary concerns lenders have about machine learning models come from so-called “black box" models.5 Although these models may offer large lifts, you can't verify how they work internally. As a result, lenders can't explain why decisions are made to regulators or consumers — effectively making them unusable. While it's a valid concern, there are machine learning models that don't use a black box approach. The machine learning model doesn't build itself and it's not really “learning" on its own — that's where the black box would come in. Instead, developers can use machine learning techniques to create more efficient models that are explainable, don't have a disparate impact on protected classes and can generate reason codes that help consumers understand the outcomes. LEARN MORE: Explainability: Machine learning and artificial intelligence in credit decisioning Building and using machine learning models Organizations may lack the expertise and IT infrastructure required to develop or deploy machine learning models. But similar to how digital transformations in other parts of the business are leading companies to use outside cloud-based solutions, there are options that don't require in-house data scientists and developers. Experian's expert-guided options can help you create, test and use machine learning models and AI-driven automated decisioning; Ascend Intelligence Services™ Acquire: Our model development service allows you to prebuild and test the performance of a new model before Experian data scientists complete the model. It's collaborative, and you can upload internal data through the web portal and make comments or suggestions. The service periodically retrains your model to increase its effectiveness. Ascend Intelligence Services™ Pulse: Monitor, validate and challenge your existing models to ensure you're not missing out on potential improvements. The service includes a model health index and alerts, performance summary, automatic validations and stress-testing results. It can also automatically build challenger models and share the estimated lift and financial benefit of deployment. PowerCurve® Originations Essentials: Cloud-based decision engine software that you can use to make automated decisions that are tailored to your goals and needs. A machine learning approach to credit risk and AI-driven decisioning can help improve outcomes for borrowers and increase financial inclusion while reducing your overall costs. With a trusted and experienced partner, you'll also be able to back up your decisions with customizable and regulatorily-compliant reports. Learn more about our credit decisioning solutions. Learn more When we refer to "Alternative Credit Data," this refers to the use of alternative data and its appropriate use in consumer credit lending decisions as regulated by the Fair Credit Reporting Act (FCRA). Hence, the term "Expanded FCRA Data" may also apply in this instance and both can be used interchangeably.1Experian (2024). Improving Your Credit Risk Machine Learning Model Deployment2Experian and Forrester Research (2023). Raising the AI Bar3Experian (2022). Driving Growth During Economic Uncertainty with AI/ML Strategies4Ibid5Experian (2020). Explainability ML and AI in Credit Decisioning
This article was updated on February 21, 2024. With the rise of technology and data analytics in the financial industry today, it's no longer enough for companies to rely solely on traditional marketing methods. Data-driven marketing insights provide a more sophisticated and comprehensive view of shifting customer preferences and behaviors. With this in mind, this blog post will highlight the importance of data-driven marketing insights, particularly for financial institutions. The importance of data-driven marketing insights 30% of companies say poor data quality is a key challenge to delivering excellent customer experiences. Today’s consumers want personalized experiences built around their individual needs and preferences. Data-driven marketing insights can help marketers meet this demand, but only if it is fresh and accurate. When extending firm credit offers to consumers, lenders must ensure they reach individuals who are both creditworthy and likely to respond. Additionally, their message must be relevant and delivered at the right time and place. Without comprehensive data insights, it can be difficult to gauge whether a consumer is in the market for credit or determine how to best approach them. READ: Case study: Deliver timely and personalized credit offers The benefits of data-driven marketing insights By drawing data-driven marketing insights, you can reach and engage the best customers for your business. This means: Better understanding current and potential customers To increase response and conversion rates, organizations must identify high-propensity consumers and create personalized messaging that resonates. By leveraging customer data that is valid, fresh, and regularly updated, you’ll gain deeper insights into who your customers are, what they’re looking for and how to effectively communicate with them. Additionally, you can analyze the performance of your campaigns and better predict future behaviors. Utilizing technology to manage your customer data With different sources of information, it’s imperative to consolidate and optimize your data to create a single customer view. Using a data-driven technology platform, you can break down data silos by collecting and connecting consumer information across multiple sources and platforms. This way, you can make data available and accessible when and where needed while providing consumers with a cohesive experience across channels and devices. Monitoring the accuracy of your data over time Data is constantly changing, so implementing processes to effectively monitor and control quality over time is crucial. This means leveraging data quality tools that perform regular data cleanses, spot incomplete or duplicated data, and address common data errors. By monitoring the accuracy of your data over time, you can make confident decisions and improve the customer experience. Turning insights into action With data-driven marketing insights, you can level up your campaigns to find the best customers while decreasing time and dollars wasted on unqualified prospects. Visit us to learn more about how data-driven insights can power your marketing initiatives. Learn more Enhance your marketing strategies today This article includes content created by an AI language model and is intended to provide general information.
This article was updated on February 13, 2024. Traditional credit data has long been a reliable source for measuring consumers' creditworthiness. While that's not changing, new types of alternative credit data are giving lenders a more complete picture of consumers' financial health. With supplemental data, lenders can better serve a wider variety of consumers and increase financial access and opportunities in their communities. What is alternative credit data? Alternative credit data, also known as expanded FCRA-regulated data, is data that can help you evaluate creditworthiness but isn't included in traditional credit reports.1 To comply with the Fair Credit Reporting Act (FCRA), alternative credit data must be displayable, disputable and correctable. Lenders are increasingly turning to new types and sources of data as the use of alternative credit data becomes the norm in underwriting. Today, lenders commonly use one or more of the following: Alternative financial services data: Alternative financial services (AFS) credit data can include information on consumers' use of small-dollar installment loans, single-payment loans, point-of-sale financing, auto title loans and rent-to-own agreements. Consumer permission data: With a consumer's permission, you can get transactional and account-level data from financial accounts to better assess income, assets and cash flow. The access can also give insight into payment history on non-traditional accounts, such as utilities, cell phone and streaming services. Rental payment history: Property managers, electronic rent payment services and rent collection companies can share information on consumers' rent payment history and lease terms. Full-file public records: Local- and state-level public records can tell you about a consumer's professional and occupational licenses, education, property deeds and address history. Buy Now Pay Later (BNPL) data: BNPL tradeline and account data can show you payment and return histories, along with upcoming scheduled payments. It may become even more important as consumers increasingly use this new type of point-of-sale financing. By gathering more information, you can get a deeper understanding of consumers' creditworthiness and expand your lending universe. From market segmentation to fraud prevention and collections, you can also use alternative credit data throughout the customer lifecycle. READ: 2023 State of Alternative Credit Data Report Challenges in underwriting today While unemployment rates are down, high inflation, rising interest rates and uncertainty about the economy are impacting consumer sentiment and the lending environment.2 Additionally, lenders may need to shift their underwriting approaches as pandemic-related assistance programs and loan accommodations end. Lenders may want to tighten their credit criteria. But, at the same time, consumers are becoming accustomed to streamlined application processes and responses. A slow manual review could lead to losing customers. Alternative credit data can help you more accurately assess consumers' creditworthiness, which may make it easier to identify high-risk applicants and find the hidden gems within medium-risk segments. Layering traditional and alternative credit data with the latest approaches to model building, such as using artificial intelligence, can also help you implement precise and predictive underwriting strategies. Benefits of using alternative data for credit underwriting Using alternative data for credit underwriting — along with custom credit attributes and automation — is the modern approach to a risk-based credit approval strategy. The result can offer: A greater view of consumer creditworthiness: Personal cash flow data and a consumer's history of making (or missing) payments that don't appear on traditional credit reports can give you a better understanding of their financial position. Improve speed and accuracy of credit decisions: The expanded view helps you create a more efficient underwriting process. Automated underwriting tools can incorporate alternative credit data and attributes with meaningful results. One lender, Atlas Credit, worked with Experian to create a custom model that incorporated alternative credit data and nearly doubled its approvals while reducing risk by 15 to 20 percent.3 Increase financial inclusion: There are 28 million American adults who don't have a mainstream credit file and 21 million who aren't scoreable by conventional scoring models.4 With alternative credit data, you may be able to more accurately assess the creditworthiness of adults who would otherwise be deemed thin file or unscorable. Broadening your pool of applications while appropriately managing risk is a measurable success. What Experian builds and offers Experian is continually expanding access to expanded FCRA-regulated data. Our Experian RentBureau and Clarity Services (the leading source of alternative financial credit data) have long given lenders a more complete picture of consumers' financial situation. Experian also helps lenders effectively use these new types of data. You can also incorporate the data into your proprietary marketing, lending and collections strategies. Experian is also using alternative credit data for credit scoring. The Lift Premium™ model can score 96 percent of U.S. adults — compared to the 81 percent that conventional models can score using traditional data.5 The bottom line Lenders have been testing and using alternative credit data for years, but its use in underwriting may become even more important as they need to respond to changing consumer expectations and economic uncertainty. Experian is supporting this innovation by expanding access to alternative data sources and helping lenders understand how to best use and implement alternative credit data in their lending strategies. Learn more 1When we refer to “Alternative Credit Data," this refers to the use of alternative data and its appropriate use in consumer credit lending decisions, as regulated by the Fair Credit Reporting Act. Hence, the term “Expanded FCRA Data" may also apply and can be used interchangeably. 2Experian (2024). State of the Economy Report 3Experian (2020). OneAZ Credit Union [Case Study] 4Oliver Wyman (2022). Financial Inclusion and Access to Credit [White Paper] 5Ibid.
This article was updated on January 23, 2024. Sometimes you have to break from tradition and look to modern solutions to address modern problems. As consumers increasingly expect fast-paced digital experiences, lenders are tapping into advances in computing power to enhance their operations. According to a 2022 Experian study, 66% of businesses believe advanced analytics, including machine learning and artificial intelligence, are going to rapidly change the way they do business.1 While some may feel wary about trusting automated systems, remember that you're in control of the strategy. Automation comes in after to help take over monotonous and complex or error-prone tasks. As a result, you can free up resources for work that isn't as well-suited for automation, such as analyzing results and revising strategies. The benefits of automation within loan origination From initial screenings to determining a final decision or credit limit, automation can offer benefits throughout the loan origination process. And lenders of all sizes are exploring opportunities for automation to help them: Manage an overwhelming number of applications: Lenders may be struggling to respond to an increased demand for credit, particularly if they're also dealing with staffing shortages and rely on manual inputs and reviews. Automation can remove some of the burden from employees and lead to faster decisions. Increase consistency and accuracy: Transposing information from applications and making calculations by hand can result in errors or inconsistent results. Modern automated systems can help ensure information is accurate, uniform and up to date. Create scalable processes: Automated processes are easier to scale than a strategy that relies on consistent manual reviews and frequent back-and-forth with customers. Improve customers' experiences: Fast, accurate and fair decisions make for happy customers. However, 58% don't feel that businesses completely meet their expectations for their online experience.2 What's more, 91% of online applications are abandoned before completion.3 More loans, a consistent scalable process and happy customers can all drive revenue growth. When integrated throughout the underwriting journey, automation can also help you increase conversion rates and expand your lending universe without taking on more risk. What does an optimized and automated loan origination process look like? Modern loan origination software offers flexibility, security, speed and robust integrations. These can be cloud-based systems that vendors create and manage on your behalf, or lenders that have the resources and capabilities may be able to bring (or build) them in house. Strategy first Automating parts of your origination process can save you time and money, but you have to start with a specific strategy. For example, you might consider your model's outputs and decide on denial and approval cut-off points — you can then automate those approvals and denials. You can also test, revise, and optimize strategies based on your desired results. Digital applications Let consumers apply when and how they want, even if it means pausing part-way through and continuing on a different device later. Remove potentially time-consuming steps by letting consumers upload and sign documents digitally, and use AI-driven automated systems to review the documents for accuracy.4 Integration with various data sources You need good data—and lots of it—to get the most out of an automated system. Some platforms can automatically connect and use internal data alongside third-party data sources, such as alternative data, credit bureau data and credit attributes. Identity, income and fraud checks Automated platforms can work with verification tools to quickly confirm the applicant's employment and income, confirm their identity and perform fraud checks. The process can take minutes rather than days or weeks, letting you quickly move applicants through to the next stage of the process. Decisions based on optimized models Automated decision engines use your strategy and the available data to quickly return a decision. Machine learning models can score consumers who aren't scorable by traditional credit models, expanding your potential customer base while furthering financial inclusion goals. They can also more accurately score applicants and narrow the band (and potentially the number of applications) that requires manual reviews.5 Automation in action: Atlas Credit, a small-dollar lender, wanted to modernize its lending with customized and automated systems. Experian helped them build a custom machine learning credit risk model and optimized their decision strategy and cutoffs. The results exceeded Atlas Credit's goals, and the company nearly doubled their loan approval rates while decreasing risk losses by 15 to 20 percent. Explainable results Automated, fast decisions based on machine learning and AI analytics might raise some compliance flags—but we've moved beyond black box models. You need to be aware of and follow all the applicable regulations, and you can use AI and machine learning in precise ways to increase your efficiency while having fully explainable and compliant results. Experian's automated offerings build on a history of success Experian has decades of experience helping lenders make accurate and timely credit decisions, and our flexible loan origination system can help you automate originations while managing risk. It starts with good data. While we're known for our consumer credit database that has information on over 245 million consumers, Experian can also give lenders access to alternative data, including alternative financial services, rental payment data and consumer-permission data. And we know how to incorporate your internal data to create strategies that will further your specific goals. From marketing to collections, our integrated offerings can help you use the data to automate and optimize decisions across the entire customer life cycle. And whether you want to take the reins or tap our data scientists for their expertise, there are options to fit your needs. Learn more about our suite of loan origination software solutions and PowerCurve® Originations Essentials, our automated decision engine. Learn more 1Experian (2022). Explainability: ML and AI in credit decisioning2Experian (2022). North America findings from the 2022 Decisioning Survey 3Experian (2023). eBook: The Ultimate Guide to Competitive Growth 4Ibid.5Experian (2022). Driving Growth During Economic Uncertainty with AI/ML Strategies
While today’s consumers expect a smooth, frictionless digital experience, many financial institutions still rely on outdated technology and manual reviews to acquire new customers. These old processes can prevent lenders from making accurate and timely credit decisions, leading to lost opportunities, revenue, and goodwill. By optimizing their customer acquisition strategies, financial institutions can allocate their resources effectively and say yes to consumers faster. This guide will walk you through the current challenges facing customer acquisition and how robust optimization strategies can help. Current challenges in customer acquisition To stay competitive and engage high-value customers, you’ll need an efficient customer acquisition process that weeds out both fraudulent actors and risky consumers. However, achieving this balancing act comes with a unique set of challenges. Because today’s consumers can access goods and services almost anywhere online at any time, more than 54 percent of customers expect a heightened digital and frictionless experience. Failing to meet this expectation can lead to huge losses for lenders. Some of the most common challenges in customer acquisition include: Although 52 percent of consumers prefer digital banking options over visiting branches in person, many lenders still rely on paper documents, which can add weeks to the onboarding process. Requiring consumers to provide substantial information about themselves during an application process can lead to abandoned applications. 67 percent of consumers will leave an application if they experience complications. Verifying consumer identities is growing increasingly important. In fact, about 35 percent of customers drop out of digital onboarding because their identity can't be confirmed. Poorly defined campaign planning can cause businesses to market to the wrong population segments, resulting in wasted time and resources. What is optimization for customer acquisition? Customer acquisition optimization is the process of implementing new methods and solutions to make acquiring new customers more efficient and cost-effective. For lenders, this means streamlining steps in the credit decisioning process to focus on the right prospects and reduce friction. What types of processes can be optimized for customer acquisition? You might be surprised just how many processes can be optimized for customer acquisition. Here are just a few examples: Having a holistic view of consumers allows you to take the guesswork out of targeting so you can better identify and engage high-potential customers. Utilizing predictive and lifestyle data enables you to pinpoint a more precisely segmented audience for marketing. Digital application solutions that reach across multiple channels, allowing applicants to leave one channel and pick up right where they left off in another. Real-time identity verification and fraud detection during onboarding and after, helping expedite approvals and mitigate risks. Utilizing API integration to leverage multiple metrics beyond credit scores when screening applicants' financial situation. Building custom risk models that pair to your existing data so you can say yes to more customers and better manage portfolio risk. Benefits of customer acquisition optimization Optimization can bring numerous benefits to your business, providing a faster return on investment. Here are some examples. By better pinpointing your marketing through predictive and lifestyle data, you can achieve increased conversions. Faster onboarding with less friction helps retain more customers. Real-time fraud detection and identity verification reduce customer roadblocks, allowing you to realize significant growth. Custom risk models and decisioning platforms can pair your data with additional data elements, providing more than just a credit score rating for your applicants. This can help you say yes to more customers. Using AI and machine learning tools will reduce the need for manual reviews and thus increase booking rates and applications. A real-life example of these benefits can be found with the Michigan State University Federal Credit Union (MSUFCU.) With over $7.2 billion in assets and 330,000 members, the client was manually reviewing all its applications. Experian reviewed the client's risk levels and approvals, comparing their risk and bankruptcy scores to determine which were most predictive. This analysis led Experian to recommend a new decisioning platform (PowerCurve Originations®) for instant credit decisions, an alternative data score tool, and Experian Advisory Services for risk-based pricing. After implementing these optimization solutions, MSUFCU saw a 55 percent increase in average monthly automations, four times improved online application response time and began competing more effectively in the marketplace. How Experian can help Experian offers a number of customer acquisition tools, allowing companies to be more responsive in an increasingly competitive market, while still reducing fraud risk. These tools include: Acquisition optimization marketing Experian offers a web-based platform that lets clients manage their marketing efforts all in the same place. You can upload and enhance client files, identify lookalike prospects, and use firmographic and credit data to get a holistic view of your clients and your prospects. Data-driven acquisition and decisioning engine PowerCurve Originations® is a data-driven decisioning engine that accepts applications from multiple channels, automates data collection and verification and proactively monitors decision results. It's flexible enough to reach across multiple channels, letting customers set aside their application in one digital channel and resume where they left off in another. It also provides businesses with access to comprehensive data assets, proactive monitoring and streamlined development with minimal coding. Enhanced fraud detection and identity verification Experian's Precise ID® is a risk-based fraud detection and prevention platform that provides analytics to accurately verify customers and mitigate fraud loss behind the scenes, ensuring a smoother onboarding process. Robust consumer attributes for better customized models Experian gives clients access to a wider berth of consumer attributes, helping you better screen applicants beyond just looking at credit scores. Trended 3DTM attributes let you uncover unique patterns in consumers' behavior over time, allowing you to manage portfolio risk, build better models and determine the next best actions. Premier AttributesSM aggregates credit data at the most granular and meaningful levels to provide clear insights into consumer credit behavior. It encompasses more than 2,100 attributes across 51 industries to help you develop highly predictive custom models. Enterprise-wide credit decisioning engine Experian's enterprise-wide credit decision platform lets you combine machine learning with proprietary data to return optimized decisions and quickly respond to requests. Robust credit decisioning software lets you convert data into meaningful actions and strategies. With Experian's machine learning decisioning options, companies are realizing a 25 percent reduction in manual reviews, a 25 percent increase in loan and credit applications and a 26 percent increase in booking rates. Highly predictive custom models Experian's Ascend Intelligence ServicesTM can help you create highly predictive custom models that create sophisticated decisioning strategies, allowing you to accurately predict risk and make the best decisions fast. This end-to-end suite of solutions lets you achieve a more granular view of every application and grow portfolios while still minimizing risk. Experian can help optimize your customer acquisition Experian provides a suite of decisioning engines, consumer attributes and customized modeling to help you optimize your customer acquisition process. These tools allow businesses to better target their marketing efforts, streamline their onboarding with less friction and improve their fraud detection and mitigation efforts. The combination can deliver a powerful ROI. Learn more about Experian's customer acquisition solutions. Learn more
Well-designed underwriting strategies are critical to creating more value out of your member relationships and driving growth for your business. But what makes an advanced underwriting strategy? It’s all about the data, analytics, and the people behind it. How a credit union achieved record loan growth Educational Federal Credit Union (EdFed) is a member-owned cooperative dedicated to serving the financial needs of school employees, students, and parents within the education community. After migrating to a new loan origination system, the credit union wanted to design a more profitable underwriting strategy to increase efficiency and grow their business. EdFed partnered with Experian to design an advanced underwriting strategy using our vast data sources, advanced analytics, and recommendations for greater automation. After 30 months of implementing the new loan origination system and underwriting strategies, the credit union increased their loans by 32% and automated approvals by 21%. “The partnership provided by Experian, backed by analytics, makes them the dream resource for our growth as a credit union. It isn’t just the data… it’s the people.” – Michael Aubrey, SVP Lending at Educational Federal Credit Union Learn more about how Experian can help you enhance your underwriting strategy. Learn more
Growing deposits from existing customers and members is an ongoing priority for banks and credit unions. However, it can be challenging to identify the best candidates. Who among our customer base has significant deposit growth potential? Who among our member base has the financial capacity to take advantage of special offers? With an effective deposit growth strategy, you can find the best customers and members to engage. What does an effective deposit growth strategy look like? An effective bank and credit union deposit growth strategy is powered by differentiated data and digital engagement. Let’s take a closer look at each element: Data: A comprehensive measurement of consumers’ income and insights into their banking behaviors can help you identify those with the greatest deposit growth potential. You can then use supplemental data, such as lifestyle and demographic data, to customize deposit offers based on your customers or members’ unique needs. Digital engagement: To further personalize this experience, consider sending deposit offers through your mobile or online banking platforms when there are triggering events on their account. Not only does this optimize the digital experience, but it also helps boost the chances of your customers or members responding. Finding the right partner Experian’s solutions can help your business secure deposits and customer relationships in today’s crowded market, including Banking InsightsTM. Banking Insights provide greater visibility into integrated demand deposit account activity, such as checking and saving account inquiries, to help you better assess consumers’ financial stability. By using these insights to power your banking growth strategies, you can identify those with the financial capacity to bring in more deposits. Read our e-book to learn about other solutions that can help you boost deposits, strengthen existing relationships, and provide seamless digital experiences. Read e-book
This article was updated on September 8, 2023. Prescreen, prequalification and preapproval. The terms sound similar, but lenders beware. These credit solutions are quite different, and regulations vary depending on which product is utilized. Let’s break it down… What is prescreen? Perhaps the most reliable mailbox tenant, thick envelopes splashed with “limited time offer” or other flashy designations offering various card and credit products – otherwise known as prescreen offers – are a mainstay in many households. Prescreen is a process that happens behind-the-scenes where a lender screens a consumer’s credit to determine whether to extend a firm offer of credit. The process takes place without the consumer’s knowledge and without any negative impact to their credit score. For lenders and financial institutions, credit prescreen is a way to pick and choose the criteria of the consumers you want to target for a particular offer – often in the form of better terms, interest rates or incentives. Typically, a list of consumers meeting specific credit criteria is compiled by a Credit Reporting Agency, like Experian, and then provided to the requesting lending institutions or their mailing service. In other words? Increase response rates and conversion by targeting the right consumers and eliminating unqualified prospects. Additionally, prescreening consumers also reduces high-risk accounts, targeting the best prospects to reach them at the right time with the right offer for their needs. Gone are the days of batch-and-blasting. It’s expensive and a challenge for constantly limited marketing budgets. Prescreen decreases acquisition and mailing costs by segmenting a lender’s prospect list. In one case, a lender identified more than 40 thousand loans, representing $466 million in loan growth opportunities, after using digital prescreen. Governed by the Fair Credit Reporting Act (FCRA), lenders initiating prescreen campaigns for credit products must also adhere to certain rules. What qualifies one of these campaigns? A firm offer of credit An inquiry posting is required (though it is a “soft” inquiry) Consumers also have the option to opt out of preapproved and prescreen credit offer lists In addition to acquisitions via direct mail, there are various types of prescreen tailored to the multiple channels where marketing takes place in today’s world. For example, Instant Prescreen can increase new account acquisitions by performing the preapproval process in seconds, while the customer is on your website, on the phone with you or at your business. Similar to how you might screen calls on your cell phone by letting them go to your voicemail inbox or screen candidates’ resumes before inviting them for an interview for an open position at your company, a prescreened credit offer is not much different. Focusing on your audience that is most likely to respond to your offers is an easy way to increase your ROI and should be considered a best practice when it comes to your marketing efforts. What is prequalification? Prequalification, on the other hand, is a consumer consent-based credit screening tool where the consumer opts-in to see which credit products they may be qualified for in real time at the point of contact. Unlike a prescreen which is initiated by the lender, the prequalification is initiated by the consumer. In this instance, envision a consumer visiting a bank and inquiring about whether they would qualify for a credit card. During a prequalification, the lender can explore if the consumer would be eligible for multiple credit products – perhaps a personal loan or HELOC. The consumer can then decide if they would like to proceed with the offer(s). A soft inquiry is always logged to the consumer’s credit file, and the consumer can be presented with multiple credit options for qualification. No firm offer of credit is required, but adverse action may be required, and it is up to the client’s legal counsel to determine the manner, content, and timing of adverse action. When the consumer is ready to apply, a hard inquiry must be logged to the consumer’s file for the underwriting process. With Experian’s Prequalification, you can match prospective customers with the right loan products at the point of contact, allowing you to increase approval rates and ROI. How will a prequalification or prescreen invitation/offer impact a consumer’s credit report? Inquiries generated by prequalification offers will appear on a consumer’s credit report. For “soft” inquiries, in both prescreen and prequalification instances, there is no impact to the consumer’s credit score. However, once the consumer elects to proceed with officially applying for and/or accepting a new line of credit, the hard inquiry will be noted in the consumer’s report, and the credit score may be impacted. Typically, a hard inquiry subtracts a few points from a consumer’s credit score, but only for a year, depending on the scoring model. Learn more about Prescreen | Learn more about Prequalification
Americans swipe, tap or insert their debit and credit cards at supermarkets, gas stations, restaurants, hotels and ATMs, conducting more than 74 million daily transactions.¹ Despite the volume of transactions, just 23% of banking customers give their bank high marks for its range of products, services and financial advice.² A hyper-digital, ever-changing banking industry means that there are more choices for financial service providers than ever before — and customers are taking full advantage of the options. On average, consumers have more than six different financial products and 82% of consumers between the ages of 18 and 24 acquired financial services products from new providers in the past 12 months.² Digital transformation for banks is more crucial than ever, with some studies showing that 78% of bank customers prefer to access their accounts via a website or mobile app (with less than half of those surveyed ranking branch access as an important feature when shopping for a new checking account).³ Banks must embrace innovative strategies to elevate the banking customer experience in a competitive market. Here are some ways to boost customer retention and drive profitable growth. Rethink processes Complex processes and excessive paperwork needed to open accounts, approve credit cards and process loan applications can frustrate customers. In 2022, up to 60% of consumers said they would abandon the onboarding process to open a digital bank account if the process took longer than five minutes,4 which in turn, can lead to lost revenue.5 Digital transformation initiatives can resolve these issues to improve the customer experience. Banks that leverage solutions, like artificial intelligence and automated data-driven decisioning solutions, to facilitate faster, more streamlined services can reduce friction, expedite processes and decrease wait times, resulting in improved customer satisfaction and retention. Reduce fragmentation Financial services are more fragmented than ever. Retail banking customers often use different providers for their checking and savings accounts, credit cards, investments, mortgages and other banking products. The options to access those accounts are also diverse, with customers choosing from brick-and-mortar branches, websites and mobile devices. Increased fragmentation means that the need to create an omnichannel experience should be top of mind for lenders. One survey found that 70% of consumers rated a consistent experience across channels as “extremely important" or “very important" when selecting their primary bank.6 Additionally, the current retail banking landscape often fails to reward consumers for loyalty. Fewer than 15% of banks provide comprehensive rewards to those who use a single bank for multiple products or services, even though reducing fragmentation and taking a holistic approach to meeting customer needs can provide a competitive advantage.² Personalize the digital experience While digital banking has reduced face-to-face interaction between banks and customers,² consumers still expect a personalized banking experience. Their top demands for personalization tools are ones that can help them avoid fees and deliver automatic account alerts.7 Experian has shown that using data analytics can lead to an improved understanding of customer needs and preferences, while customer segmentation enables the creation of targeted marketing campaigns, customized product offerings and tailored financial advice. These efforts towards a more personalized banking experience help increase customer satisfaction and loyalty. Provide more touchpoints An increasing number of branch closures and greater demand for digital banking services mean that just 3% of banking transactions are conducted in person.² Customers are more willing to use digital channels for services like opening accounts and applying for loans.8 Banks can promote credit offers and product recommendations via email, social media and mobile banking applications while providing real-time digital customer experiences and prioritizing consistency across channels. Embracing a multichannel approach to marketing can help banks achieve better results, making it easier to cross-sell customers, amplify offers and meet consumer expectations for a personalized digital experience. Go beyond banking Experian research found that 80% of customers felt their relationships with financial institutions were “purely transactional," but the customer experience in banking is about more than deposits, withdrawals and interest payments. Customers want resources and information to improve their financial well-being — and providing it can build trust, improve customer retention and boost revenue. Although more than two-thirds of customers expect companies to understand their needs and expectations, just three in 10 banking customers felt their financial providers met their demands.9 Using digital channels to provide education might be more effective than encouraging appointments with customer service representatives, especially for the 29% of consumers who don't feel comfortable asking about financial products.10 These tactics can help you: Leverage artificial intelligence to provide educational resources and personalized financial advice. Monitor user transactions for unusual activities and push information about online security or fraud protection. Employ chatbots to provide investment information and credit score monitoring and respond to questions about products ranging from mortgages to credit cards. Enhance your customer retention strategies by focusing on credit education and helping customers at every stage of their financial lives. Foster a customer-centric culture Globally, banks have invested $124 billion in artificial intelligence, machine learning and other technologies to make retail banking services more efficient and effective.² Personalization is still imperative, and putting the customer first must remain the highest priority. For large, multichannel banks, a mere one-point improvement in the customer experience score can lead to an incremental $123 million in revenue; the same one-point increase in the customer experience score can generate $92 million in revenue for a direct bank.11 Achieving those results requires a solid strategy for an improved banking customer experience. Experian leverages customer-level analytics and provides comprehensive solutions to expand digital transformation efforts, drive acquisition and improve customer retention. To learn more about solutions, visit us online. 1Federal Reserve (2023). Commercial Automated Clearinghouse Transactions Processed by the Federal Reserve 2Accenture (2023). Global Banking Customer Study 3Forbes Advisor (2023). U.S. Consumer Banking Statistics 4Digital Banking Report (2022). Best Practices for Successful Digital Account Opening 5Abbyy (2022). State of Intelligent Automation Report, Customer Onboarding Pain Points and Drivers Q4-2022 6Deloitte Insights (2018). Accelerating digital transformation in banking 7D. Power (2022). U.S. Retail Banks Struggle to Differentiate, Deliver Meaningful Customer Experience as Economy Sours, J.D. Power Finds 8McKinsey & Company (2022). Best of both worlds: Balancing digital and physical channels in retail banking 9Experian (2022). Building customer loyalty through financial education 10Milken Institute (2021). Financial Literacy in the United States 11Forrester (2022). Who Does it Well and Why it Matters