Harnessing Traditional and Alternative Credit Data: Credit Optics 5.0

Size: px
Start display at page:

Download "Harnessing Traditional and Alternative Credit Data: Credit Optics 5.0"

Transcription

1 Harnessing Traditional and Alternative Credit Data: Credit Optics 5.0 March 1, 2013

2 Introduction Lenders and service providers are once again focusing on controlled growth and adjusting to a lending environment that has forever changed. Today s regulatory and competitive pressures make it more important than ever for credit providers to make informed, effective risk assessments. To make the most attractive, yet profitable offers to increasingly in-demand consumers, it is no longer sufficient to use only traditional credit history data. Conventional credit scores have been shown to provide a limited view of consumer behavior and its associated risk. To deliver smart, targeted, offers for credit and services, organizations need comprehensive and current visibility into consumer risk, which is attainable only through the combination of traditional and alternative forms of credit data. Credit Optics from ID Analytics combines the power of traditional and alternative data to develop optimal credit decisions, allowing organizations to grow their portfolios while controlling exposure to risk. Credit Optics is a FCRA-compliant alternative credit score that provides the powerful, differentiated insights organizations require to develop a more complete picture of an individual s creditworthiness across the entire customer lifecycle. The score is designed to function either as a standalone credit score or as a plus one score capable of meaningfully enhancing the strength of existing custom and traditional credit scores. The newest version of the Credit Optics score leverages proprietary cross-industry event and performance data to provide a significant leap forward in predictive power, while continuing to be uncorrelated with traditional scores ensuring it contributes additive benefit when inserted into existing credit strategies and policies. This paper discusses how the newest and most powerful version of Credit Optics was built, including the analytic development process, model performance, stability, and impact of performance for ID Analytics clients. Credit Optics has been deployed across several industries including financial services, auto lending, subprime lending, and telecommunications. Using Credit Optics in combination with traditional credit scores, clients can achieve improvements in all of the credit decisions which impact a lender s bottom line, including prescreen, approval, credit line, and account management decisions. 2

3 The Advantages of the ID Network The unique risk perspective of Credit Optics is driven by the ID Network, a repository of consumer behavior data from a wider range of industries than other leading sources. A real time, cross-industry compilation of consumer risk information, the ID Network enables ID Analytics to deliver reliable, high-resolution visibility into how a consumer behaves across industries over time. By combining the traditional and alternative credit data found in the ID Network with world class analytics, Credit Optics is able to deliver a more accurate assessment of credit risk for more consumers than traditional credit scores alone. There is no question that traditional data assets used to create credit scores provide value in assessing a consumer s credit risk. Usage data, payment behavior and delinquency information on lending products provide valuable indicators into the likelihood of future consumer behavior on loans and services. What makes Credit Optics special is the addition of alternative data not typically provided in a credit score. Alternative data assets provide a broader view of a consumer s credit behavior beyond financial services accounts into other industries and payment vehicle types. This broader view, when input into advanced analytic models provides a more robust prediction of a consumer s creditworthiness. Credit Optics includes usage and payment behavior on wireless phones, utilities and cable, as well as use and payment behavior on payday loans and other sub-prime lending vehicles. Credit Optics also includes data on demand deposits accounts and alternative payment data, which can indicate a preference for non-traditional lending institutions. 3

4 The use of both traditionally predictive and alternative credit data enables Credit Optics to deliver a unique and predictive new perspective on consumer credit risk that is highly effective when used as a plus one score in addition to an existing credit bureau score or custom credit score. 4

5 Building Credit Optics 5.0 Credit Optics has been developed similarly for use in the bankcard, auto lending, and telecommunications industry. This whitepaper addresses the bankcard version of Credit Optics 5.0, which was developed specifically for use in prescreen, acquisition, and portfolio management credit decisions. To develop this model, ID Analytics employed a modeling technique known as LogitBoost, an extension of the popular AdaBoost method. This method uses a series of small segmentation trees that negate the need for upfront population segmentation. The training population contained bankcard inquiries that resulted in active trades. The timeframe selected for the model development sample included the first quarter of 2008 through the second quarter of This time period is important because it covers a rapidly changing credit environment containing elements of a deep recession as well as its ensuing recovery. The development sample included a representative population of over 9.4 million inquiries that resulted in active trades and combined eight different data sources. Having such a broad sample of data helps deliver the most robust model possible, which provides high performance during varying economic conditions. Characteristics for Credit Optics were calculated based on a view of an applicant s information from the ID Network, thus not restricted to just financial trades. The layers and complexity of the data and interactions available through the ID Network mean that many thousands of variables are generated as candidates to the final model. This data was combined with the many traditional credit bureau-type attributes, also from the time of application. These may include elements such as number of bankcard lines open, utilization, and highest credit limit. The unique insight available through the combination of traditional and alternative credit data leads to a credit score that performs better than either approach alone. 5

6 a. Performance Data Credit Optics uses a bad tag consistent with industry standards: ninety days past due (DPD) within twelve months of the date of inquiry. Charge-offs, bankruptcies and collections are all also included in the definition of bad. Good accounts were defined as accounts with no more than thirty days past due within a twelve month time window. All other accounts were excluded from the modeling population as indeterminate. The 9.4 million inquiry sample included portfolios with vastly different bad rates, coming from all denominations of creditworthiness. The portfolios included in the final consortium had bad rates ranging from below 1% to over 10%. b. Population Segmentation Testing the robustness of the model warranted dividing the population into three distinct time periods. The early holdout set and the late holdout set were complete out-of-time samples not used in the development of the model. The early holdout set was selected and Q1 of 2008, representative of applications made during a declining credit landscape. The late holdout set was selected from Q2 of The remaining applications consisted of the model development set; this was subdivided into various training, testing and holdout sets as shown in Figure 1. All candidate models were evaluated independently on the three sets: early out-of-time, late out-of-time and in-time holdout. The only non-time dependent dimension of segmentation was dividing the population into hit versus no-hit segments based on the applicant s presence or lack of traditional credit relationships. Where an account was deemed a hit, traditional credit variables were used to enhance the ID Network-derived variables. In the no-hit group the ID Network-derived from nontraditional financial relationships were used. Data such as cell phone and payday loan information from the U.S. consumer base is an example of non-traditional data. While these no-hits would typically be underserved by traditional credit scores, Credit Optics 5.0 provides a very reasonable determination as to how these applications would perform. Figure 1 Credit Optics 5.0: Model Development Sample ( 000s) SEGMENTATION HIT NO HIT TOTAL Early Holdout 2, ,808 Model Development Set 5, ,065 Late Holdout Total 8, ,436 6

7 c. Modeling Algorithm The foundational algorithm used to train the Credit Optics 5.0 model is known as LogitBoost, which is an extension of the popular AdaBoost modeling method. This method uses a log likelihood loss based on a logit representation of the probability of bad as a function of the optimized quantity. The key feature of the method is that the solution of the optimization problem is represented as a sum of simple classifiers (in this case, regression trees). Each classifier in the sequence is determined by an optimization of the loss function with a prior determined by the sum of the previous classifiers, which effectively reweight the examples, focusing on those that were poorly classified. This weighting is not ad hoc; rather it derives directly from the optimization of the log likelihood loss function in the presence of a prior. The distinctive characteristics of LogitBoost relative to AdaBoost are the use of the log likelihood rather than exponential loss function, as well as implementing a Newton update with each iteration, which provides a more robust approach to the optimal solution. The final algorithm contained a set of proprietary modifications to the LogitBoost approach that added quantitative improvement to the model. d. Model Training Many combinations of parameters were explored in building the latest Credit Optics model. These parameters included differential bad sampling, time-decay weighting, scoring initialization, adjusting model parameters and using novel proprietary transformations of the data. Presegmentation strategies were also tested, however a model using two segments, hit versus nohit, as described above, was found to be the best performing and most robust. Each model was tested on four different training datasets, selected from the model development set time period and including several hundreds of thousands of accounts chosen from each of the different datasets. The models were also compared to other models built on custom versions of the datasets and were shown to be comparable in terms of performance. Candidate variables were considered in several rounds of testing, to ensure that the model included a set of variables that contributed significantly to the model s performance and to ensure that only variables that did not appear to have an interaction with the calendar or credit landscape at the time were selected this step was critical in ensuring a model that was the most robust. The final candidate model was one that performed best on population weighted average across the datasets on the held-out population. 7

8 e. Variable Selection The model s performance across time periods and portfolios was enhanced by a careful selection of the variables to be included in the final model. For variable selection, ID Analytics employs a backward selection methodology with a model-driven performance metric. In addition to the typical scrutiny applied to any variables to be included in credit models, each candidate variable was rigorously tested to see if there was any disparate effect with regards to credit regime effectively whether a variable had a different effect on the score produced during the recession rather than at other times. Figure 2 provides an example of one such variable, which was excluded from the model. In this example, the relative ratio of bads and goods is dependent on time much higher during the recessionary period - which could adversely affect the model s performance over time. A number of such variables were excluded. Figure 2 8

9 4. Model Performance Results The overall model performance, considering all hits and no-hits over the entire holdout set (much of it out-of-time) had a maximum overall KS of 39. Breaking down the performance data by credit class, the model has KS values ranging from 27 to 46, with a good performance in all three time periods, as shown in Figure 3. Figure 3 Credit Optics 5.0: Maximum KS CREDIT CLASS EARLY HOLD-OUT IN TIME LATE HOLD-OUT Prime Near-Prime Sub-Prime It s worth noting that the KS values shown within each credit class are lower than the maximum KS values observed on files spanning all credit classes. The lower KS values within credit classes are expected, as the KS statistic will typically decrease as populations become more homogenous. While different credit classes exhibit different levels of performance, they were consistently within a percent or two of a custom model generated using a specific dataset/time period combination. There was no significant bias in performance by credit class. As seen below, prime portfolios have a KS in the mid-40s, a near prime portfolio performs in the low-40s and a mid-subprime also performs in the low-30s. The more subprime (as determined by overall bad-rate) dataset had a generally lower performance, but this was a function of the greater number of no-hits present in that portfolio. Indeed, this specific portfolio had a no-hit rate of thirty percent, against the less than ten percent for the entire population. Figure 4 breaks down the Figure 3 results to show performance on the hit and no-hit populations: Figure 4 Credit Optics 5.0: Maximum KS CREDIT CLASS HIT NO HIT Prime 46 Near-Prime 39 Sub-Prime

10 Perhaps as important as the model s overall predictive strength, is the lift that it provides when used in conjunction with a traditional credit score as a plus one. Figure 5 demonstrates the lift provided to a Top 10 Bankcard issuer who tested Credit Optics both as a standalone credit score and as a plus one with its existing credit score. Credit Optics, when used as a plus one, provided a significant lift over using either Credit Optics or the traditional credit score as a standalone risk assessment tool. Figure 5 Credit Optics 5.0: KS Results for a Top 10 Issuer MODEL MAXIMUM KS Traditional Score 42 Traditional Score + Credit Optics 53 While the bureau score the issuer was using performs well, combining it with Credit Optics makes a powerful difference. Figure 6 shows additional detail illustrating how Credit Optics provides meaningful new information capable of significantly improving an organization s risk decisions. Figure 6 Credit Optics 5.0: Maximum KS High Risk Low Risk Total Traditional Risk Scores Below % 3.9% 3.6% 3.5% 3.2% 3.1% 3.2% 3.0% 2.3% 1.3% 3.3% % 4.1% 3.9% 3.8% 2.6% 2.5% 2.1% 2.0% 1.7% 1.5% 2.9% % 3.0% 2.5% 1.8% 1.8% 1.6% 1.5% 1.4% 1.0% 1.2% 2.1% % 2.0% 1.6% 1.5% 1.4% 1.0% 1.0% 0.8% 0.8% 0.5% 1.5% % 1.5% 1.2% 1.0% 0.8% 0.7% 0.7% 0.5% 0.5% 0.5% 1.0% % 1.0% 0.8% 0.8% 0.6% 0.5% 0.6% 0.3% 0.5% 0.2% 0.8% % 0.8% 0.7% 0.5% 0.3% 0.5% 0.3% 0.3% 0.2% 0.2% 0.6% % 0.6% 0.5% 0.3% 0.3% 0.2% 0.3% 0.2% 0.1% 0.1% 0.5% % 0.3% 0.5% 0.5% 0.3% 0.2% 0.2% 0.2% 0.2% 0.1% 0.3% Above % 0.3% 0.2% 0.2% 0.1% 0.1% 0.1% 0.1% 0.1% 0.1% 0.2% Total 4.3% 2.9% 1.6% 1.3% 0.9% 0.7% 0.6% 0.5% 0.3% 0.2% 1.3% Accounts with similar performance and vastly different Risk Scores As seen above, Credit Optics and the traditional risk score are not highly correlated (correlation coefficient = 0.642). This means that Credit Optics has additive power to differentiate high risk consumers who score low risk with a traditional credit score (important for risk assessment) and low risk consumers who score high risk with a traditional credit score (important for expanding growth populations). Figure 6 illustrates the ability of the Credit Optics score to separate risk within traditional score 10

11 bands. This can be seen by examining each row, where a population traditionally viewed as homogenous by a traditional score is further segmented into more granular populations of varying risk as identified by the Credit Optics score. Across rows one can discern many examples similar to the one highlighted where the overlay of the Credit Optics risk assessment identifies populations of similar risk but significantly different traditional scores. In each of these instances, Credit Optics is providing the issuer with refined insight into consumer credit risk required to make more informed, profitable lending decisions. Further evidence of the robust performance of Credit Optics is that the model s odds remain consistent through time. Figure 7 demonstrates the log-odds ratio by decile of the entire scored population, ordered by score (from high to low) using an equal binning method. A log-odds of two corresponds to an odds ratio of 100 (very low probability of going bad as per the definition), which is consistent with being given a high score. What s important to note is that these lines are reasonably consistent across time. 11

12 Figure <300 Observing the results at the portfolio-level, as seen in Figure 8 for the subprime portfolio, the lines are even more consistent. The odds are slightly worse at each decile with respect to the overall population, especially in later deciles, which would be expected for a subprime portfolio. The decrease in odds by decile is consistent through time, showing slightly improving overall odds between 2008 and 2010, which reflects the credit environment. Figure <300 12

13 Conclusion As lenders, telecommunications providers and utility companies focus on acquiring and retaining highly profitable consumer relationships while controlling credit risk and complying with all regulatory requirements, there is a need to achieve a new level of visibility into a consumer s credit profile. Traditional credit scores cannot provide a complete view of the consumer s credit history due to the limited data used to calculate these scores. To identify, acquire and cultivate the right consumers for credit and service offers, organizations need more complete, up-to-date access into a consumer s risk assessment. This is achieved through the unique combination of traditional and alternative credit data. Credit Optics is designed to accurately predict credit risk on its own, boost the power of traditional credit scores, and provide actionable intelligence on the emerging market. Using the newest version of Credit Optics, clients can achieve increased revenue and decreased credit losses through improvements in prescreen, approval, credit line, pricing, and portfolio management decisions. Credit Optics is built to be FCRA compliant, while also being transparent and consumerfriendly, enabling organizations to incorporate Credit Optics into current credit risk strategies with complete confidence. For more information on how Credit Optics can help your company confidently make more informed, profitable lending decisions, contact us today at marketinginfo@idanalytics.com, , or visit 13

14

Alternative Credit Scores: The Key to Financial Inclusion for Consumers

Alternative Credit Scores: The Key to Financial Inclusion for Consumers WHITEPAPER Alternative Credit Scores: The Key to Financial Inclusion for Consumers May 2017 WHITEPAPER Alternative Credit Scores: The Key to Financial Inclusion for Consumers May 2017 Executive summary

More information

Driving Growth with a New Measure of Credit Capacity

Driving Growth with a New Measure of Credit Capacity Driving Growth with a New Measure of Credit Capacity Driving Innovation FICO and Equifax Open Avenues to Growth with a More Comprehensive Approach to Risk Assessment August 2012 For more than five years,

More information

Using alternative data, millions more consumers qualify for credit and go on to improve their credit standing

Using alternative data, millions more consumers qualify for credit and go on to improve their credit standing NO. 89 90 New FICO research shows how to score millions more creditworthy consumers Using alternative data, millions more consumers qualify for credit and go on to improve their credit standing Widespread

More information

Universe expansion. Growth strategies in the evolving consumer market

Universe expansion. Growth strategies in the evolving consumer market Growth strategies in the evolving consumer market Executive summary As the economy gains strength, lenders are engaging in an increasingly fierce competition to entice the best candidates to their portfolios

More information

How much can increased predictive power impact profits?

How much can increased predictive power impact profits? How much can increased predictive power impact profits? Expand market share across the consumer continuum, from full-file to no-file, with LexisNexis RiskView. LexisNexis RiskView Solutions Risk Solutions

More information

GET SOCIAL WITH US. #vision2016. Tweet, follow, share throughout the session.

GET SOCIAL WITH US. #vision2016. Tweet, follow, share throughout the session. GET SOCIAL WITH US Tweet, follow, share throughout the session. 2015 Experian Information Solutions, Inc. All rights reserved. 1 Alternative methods to validate with low portfolio volumes Experian and

More information

Top US Bankcard Issuer Validates the Power of FICO 8 Score Key metrics exceed client expectations in originations testing

Top US Bankcard Issuer Validates the Power of FICO 8 Score Key metrics exceed client expectations in originations testing white paper Top US Bankcard Issuer Validates the Power of FICO 8 Score Key metrics exceed client expectations in originations testing March 2010»» Summary In recent validation testing, a top US bankcard

More information

Implementing a New Credit Score in Lender Strategies

Implementing a New Credit Score in Lender Strategies SM DECEMBER 2014 Implementing a New Credit Score in Lender Strategies Contents The heart of the matter. 1 Why do default rates and population volumes vary by credit scores? 1 The process 2 Plug & Play

More information

SEGMENTATION FOR CREDIT-BASED DELINQUENCY MODELS. May 2006

SEGMENTATION FOR CREDIT-BASED DELINQUENCY MODELS. May 2006 SEGMENTATION FOR CREDIT-BASED DELINQUENCY MODELS May 006 Overview The objective of segmentation is to define a set of sub-populations that, when modeled individually and then combined, rank risk more effectively

More information

Identifying High Spend Consumers with Equifax Dimensions

Identifying High Spend Consumers with Equifax Dimensions Identifying High Spend Consumers with Equifax Dimensions April 2014 Table of Contents 1 Executive summary 2 Know more about consumers by understanding their past behavior 3 Optimize business performance

More information

Diving deep on credit establishment

Diving deep on credit establishment Diving deep on credit establishment Experian and the marks used herein are service marks or registered trademarks of Experian Information Solutions, Inc. Other product and company names mentioned herein

More information

The Unique Credit Characteristics of Healthcare Patients. An Equifax Predictive Sciences Research Paper December 2003

The Unique Credit Characteristics of Healthcare Patients. An Equifax Predictive Sciences Research Paper December 2003 The Unique Credit Characteristics of Healthcare Patients An Equifax Predictive Sciences Research Paper December 2003 Executive Summary As today s healthcare payment trends shift toward an ever increasing

More information

Credit Score Basics, Part 1: What s Behind Credit Scores? October 2011

Credit Score Basics, Part 1: What s Behind Credit Scores? October 2011 Credit Score Basics, Part 1: What s Behind Credit Scores? October 2011 OVERVIEW Today, credit scores are often used synonymously as an absolute statement of consumer credit risk. Or, credit scores are

More information

A new highly predictive FICO Score for an uncertain world

A new highly predictive FICO Score for an uncertain world A new highly predictive FICO Score for an uncertain world Lenders gain a 5% 15% predictive boost to manage business and control losses Number 12 January 2009 As delinquency levels increase and consumer

More information

Maximizing predictive performance at origination and beyond!

Maximizing predictive performance at origination and beyond! Maximizing predictive performance at origination and beyond! John Krickus, Experian Joel Pruis, Experian Amanda Roth, Experian Experian and the marks used herein are service marks or registered trademarks

More information

An 8-Point Tune-Up to Boost Auto Lending

An 8-Point Tune-Up to Boost Auto Lending An 8-Point Tune-Up to Boost Auto Lending How analytics and business rules are helping lenders steer more top-line growth to the bottom line Number 54 August 2011 As the auto industry continues to recover

More information

Universe Expansion: Is the Way You Score Customers State of the Art or State of Denial?

Universe Expansion: Is the Way You Score Customers State of the Art or State of Denial? SM MARCH 2014 Universe Expansion: Is the Way You Score Customers State of the Art or State of Denial? Contents In summary 1 Who is typically unscoreable by conventional models? 2 How do these currently

More information

Universe Expansion: Is the Way You Score Customers State of the Art or State of Denial?

Universe Expansion: Is the Way You Score Customers State of the Art or State of Denial? SM MAY 2015 Is the Way You Score Customers State of the Art or State of Denial? Contents In summary 1 Who is typically unscoreable by conventional models? 2 How do these currently unscored consumers score

More information

A Balanced View of Storefront Payday Borrowing Patterns Results From a Longitudinal Random Sample Over 4.5 Years

A Balanced View of Storefront Payday Borrowing Patterns Results From a Longitudinal Random Sample Over 4.5 Years Report 7-C A Balanced View of Storefront Payday Borrowing Patterns Results From a Longitudinal Random Sample Over 4.5 Years A Balanced View of Storefront Payday Borrowing Patterns Results From a Longitudinal

More information

Dollars of Lines Originated (Billions) Dollars of Lines Originated Billions)

Dollars of Lines Originated (Billions) Dollars of Lines Originated Billions) Lending Trends Crissy Wallace Lead Analytics Consultant 1 Experian Agenda Macroeconomic Trends Auto Trends Mortgage Trends Personal Loan Trends Student Loan Trends Alternative Data 2 Experian 1 Since the

More information

Another Approach to Managing High Risk Customers Vision and Strategy Document

Another Approach to Managing High Risk Customers Vision and Strategy Document Authored by: Business Overview With the sustained economic downturn of the past few years, bankcard issuers are seeing an increase in delinquent dollars coupled with a general decrease in overall collection

More information

GET SOCIAL WITH US. #vision2016. Tweet, follow, share throughout the session.

GET SOCIAL WITH US. #vision2016. Tweet, follow, share throughout the session. GET SOCIAL WITH US Tweet, follow, share throughout the session. 2015 Experian Information Solutions, Inc. All rights reserved. 1 Profitable credit card lending to the underserved market: Bringing the underserved

More information

A credit score that means more. To lenders, borrowers and the nation.

A credit score that means more. To lenders, borrowers and the nation. A credit score that means more. To lenders, borrowers and the nation. Driven by a mission VantageScore Solutions is the independently managed company behind the VantageScore model, an advanced credit scoring

More information

Scoring Credit Invisibles

Scoring Credit Invisibles OCTOBER 2017 Scoring Credit Invisibles Using machine learning techniques to score consumers with sparse credit histories SM Contents Who are Credit Invisibles? 1 VantageScore 4.0 Uses Machine Learning

More information

Executing Effective Validations

Executing Effective Validations Executing Effective Validations By Sarah Davies Senior Vice President, Analytics, Research and Product Management, VantageScore Solutions, LLC Oneof the key components to successfully utilizing risk management

More information

In a credit-hungry economy, how much is too much?

In a credit-hungry economy, how much is too much? In a credit-hungry economy, how much is too much? Know how new debt affects risk with sharper measures of credit capacity Number 1 February 2008 US credit hunger seems insatiable. Consumer debt has reached

More information

A Decade of Validation Demonstrates Superior Performance

A Decade of Validation Demonstrates Superior Performance SM JULY 2016 A Decade of Validation Demonstrates Superior Performance Contents Highlights 2013-15 VantageScore Performance Compared to CRC In-House Models 2013-15 Consumer Score Consistency 2013-15 Universe

More information

Trended Credit Data Attributes in VantageScore 4.0

Trended Credit Data Attributes in VantageScore 4.0 SM OCTOBER 2017 Trended Credit Data Attributes in VantageScore 4.0 Contents What is Trended Credit Data? 1 Examples of Consumer Trended Credit Data Assessments 2 Why Use Trended Credit data? 3 Trended

More information

Boost Collections and Recovery Results With Analytics

Boost Collections and Recovery Results With Analytics Boost Collections and Recovery Results With Analytics As delinquencies continue to rise, predictive analytics focus collections and recovery efforts to maximize returns and minimize loss Number 31 February

More information

UNDERSTAND & PREDICT CONSUMER BEHAVIOUR WITH TRENDED DATA SOLUTIONS

UNDERSTAND & PREDICT CONSUMER BEHAVIOUR WITH TRENDED DATA SOLUTIONS UNDERSTAND & PREDICT CONSUMER BEHAVIOUR WITH TRENDED DATA SOLUTIONS PREDICT RISK AND REVENUE POTENTIAL WITH PRECISE, TARGETED INSIGHTS The best predictor of future behaviour is often past behaviour. That

More information

Inaugural VantageScore 4.0 Trended Data Model Validation

Inaugural VantageScore 4.0 Trended Data Model Validation SM JUNE 2018 VantageScore 4.0 2015-2017 Validation: Inaugural VantageScore 4.0 Trended Data Model Validation Contents SCORE PERFORMANCE MAINSTREAM CONSUMERS 1 Trended Data Results 1 INDUSTRY RESULTS 3

More information

Portfolio Management Package Insights A quarterly briefing with best practices and thought leadership concepts from your Portfolio Management Package

Portfolio Management Package Insights A quarterly briefing with best practices and thought leadership concepts from your Portfolio Management Package Portfolio Management Package Insights A quarterly briefing with best practices and thought leadership concepts from your Portfolio Management Package (PMP) team Contents 1. New Special Handling Code (First

More information

A Perspective on Credit Card Usage and Consumer Performance

A Perspective on Credit Card Usage and Consumer Performance February 22, 2011 Consumer Financial Protection Bureau A Perspective on Credit Card Usage and Consumer Performance Ezra D. Becker Vice President, Research and Consulting Financial Services Group ebecker@transunion.com

More information

Credit Score Basics, Part 3: Achieving the Same Risk Interpretation from Different Models with Different Ranges

Credit Score Basics, Part 3: Achieving the Same Risk Interpretation from Different Models with Different Ranges Credit Score Basics, Part 3: Achieving the Same Risk Interpretation from Different Models with Different Ranges September 2011 OVERVIEW Most generic credit scores essentially provide the same capability

More information

Analytic measures of credit capacity can help bankcard lenders build strategies that go beyond compliance to deliver business advantage

Analytic measures of credit capacity can help bankcard lenders build strategies that go beyond compliance to deliver business advantage How Much Credit Is Too Much? Analytic measures of credit capacity can help bankcard lenders build strategies that go beyond compliance to deliver business advantage Number 35 April 2010 On a portfolio

More information

White paper. Trended Solutions. Fueling profitable growth

White paper. Trended Solutions. Fueling profitable growth White paper Trended Solutions SM Fueling profitable growth Executive summary The economic crisis revealed that the traditional approach to portfolio management is flawed. The postmodel adjustment method

More information

Automotive Services. Tools for dealers, lenders and industry service providers that drive profitable results in today s economy

Automotive Services. Tools for dealers, lenders and industry service providers that drive profitable results in today s economy CONSUMER INFORMATION SOLUTIONS Automotive Services Tools for dealers, lenders and industry service providers that drive profitable results in today s economy Reach the right prospects Automotive solutions

More information

CRIF Lending Solutions WHITE PAPER

CRIF Lending Solutions WHITE PAPER CRIF Lending Solutions WHITE PAPER IDENTIFYING THE OPTIMAL DTI DEFINITION THROUGH ANALYTICS CONTENTS 1 EXECUTIVE SUMMARY...3 1.1 THE TEAM... 3 1.2 OUR MISSION AND OUR APPROACH... 3 2 WHAT IS THE DTI?...4

More information

Score migration strategies for turbulent times

Score migration strategies for turbulent times Score migration strategies for turbulent times Chuck Robida, Experian Experian and the marks used herein are service marks or registered trademarks of Experian Information Solutions, Inc. Other product

More information

HELOC end-of-draw analysis

HELOC end-of-draw analysis Managing risk and anticipating consumer behaviors An Experian perspective Table of contents The tale of housing and end of draw...1 Home equity line of credit overview...1 HELOC origination rebound post-recession...1

More information

Trends Report Alternative Financial Services Lending Trends Insights into the Industry and Its Consumers

Trends Report Alternative Financial Services Lending Trends Insights into the Industry and Its Consumers Trends Report 2018 Alternative Financial Services Lending Trends Insights into the Industry and Its Consumers 2018 Alternative Financial Services Lending Trends Overview How subprime borrower behavior

More information

Understanding HELOC end of draw

Understanding HELOC end of draw White paper Understanding HELOC end of draw Manage risks and anticipate consumer behavior Table of contents The tale of housing and end of draw... 1 Home equity line of credit overview... 1 HELOC originations

More information

2008 VantageScore Revalidation

2008 VantageScore Revalidation 2008 VantageScore Revalidation February 2009 The New Standard in Credit Scoring Overview VantageScore Solutions LLC has conducted its annual revalidation of the credit risk score, VantageScore. For the

More information

DFAST Modeling and Solution

DFAST Modeling and Solution Regulatory Environment Summary Fallout from the 2008-2009 financial crisis included the emergence of a new regulatory landscape intended to safeguard the U.S. banking system from a systemic collapse. In

More information

VANTAGESCORE SOLUTIONS INTRODUCES VANTAGESCORE 3.0 MODEL

VANTAGESCORE SOLUTIONS INTRODUCES VANTAGESCORE 3.0 MODEL FOR IMMEDIATE RELEASE Contact: Jeff Richardson VantageScore Solutions 203-363-2170 jeffrichardson@vantagescore.com VANTAGESCORE SOLUTIONS INTRODUCES VANTAGESCORE 3.0 MODEL New Model Sets the Standard for

More information

Market Variables and Financial Distress. Giovanni Fernandez Stetson University

Market Variables and Financial Distress. Giovanni Fernandez Stetson University Market Variables and Financial Distress Giovanni Fernandez Stetson University In this paper, I investigate the predictive ability of market variables in correctly predicting and distinguishing going concern

More information

Norway UNDERSTANDING CREDITSAFE COMPANY RATING & LIMIT NORWAY

Norway UNDERSTANDING CREDITSAFE COMPANY RATING & LIMIT NORWAY Norway UNDERSTANDING CREDITSAFE COMPANY RATING & LIMIT NORWAY Introduction to Creditsafe Rating The Creditsafe Rating Model is a highly predictive analysis tool that that uses the latest advanced statistical

More information

Experian-Oliver Wyman Market Intelligence Reports Strategic default in mortgages: Q update

Experian-Oliver Wyman Market Intelligence Reports Strategic default in mortgages: Q update 2011 topical report series Experian-Oliver Wyman Market Intelligence Reports Strategic default in mortgages: Q2 2011 update http://www.marketintelligencereports.com Table of contents About Experian-Oliver

More information

The Influence of Bureau Scores, Customized Scores and Judgmental Review on the Bank Underwriting

The Influence of Bureau Scores, Customized Scores and Judgmental Review on the Bank Underwriting The Influence of Bureau Scores, Customized Scores and Judgmental Review on the Bank Underwriting Decision-Making Process Authors M. Cary Collins, Keith D. Harvey and Peter J. Nigro Abstract In recent years

More information

LendIt Michele Raneri April 2016

LendIt Michele Raneri April 2016 LendIt 2016 Michele Raneri April 2016 Experian and the marks used herein are service marks or registered trademarks of Experian Information Solutions, Inc. Other product and company names mentioned herein

More information

Get educated A study in the student lending marketplace

Get educated A study in the student lending marketplace Get educated A study in the student lending marketplace Experian and the marks used herein are service marks or registered trademarks of Experian Information Solutions, Inc. Other product and company names

More information

Understanding. What you need to know about the most widely used credit scores

Understanding. What you need to know about the most widely used credit scores Understanding What you need to know about the most widely used credit scores 300 850 The score lenders use. FICO Scores are the most widely used credit scores according to a recent CEB TowerGroup analyst

More information

Unique insights on the consumer credit market

Unique insights on the consumer credit market Unique insights on the consumer credit market Highlights from the 2015 Experian Oliver Wyman Market Intelligence Report Experian and the marks used herein are service marks or registered trademarks of

More information

Research shows opportunities for lenders who act quickly and leverage sophisticated scoring and analytic tools

Research shows opportunities for lenders who act quickly and leverage sophisticated scoring and analytic tools Credit CARD Act:» Move Ahead of the Curve Research shows opportunities for lenders who act quickly and leverage sophisticated scoring and analytic tools Number 33 March 2010 The Credit CARD Act of 2009

More information

Making More Informed Decisions

Making More Informed Decisions December 8, 2008 TRANSUNION BANKRUPTCY SCORE Making More Informed Decisions Thomas Higgins Director, Analytic Decision Services thiggins@transunion.ca 416-332-2438 National Bankruptcy Trends Consumer bankruptcies

More information

Are today s market pressures reshaping credit risk?

Are today s market pressures reshaping credit risk? Are today s market pressures reshaping credit risk? New study explores FICO Score trends in dynamic times and how lenders can respond Number 3 May 2008 In turbulent economic times, financial services firms

More information

Building statistical models and scorecards. Data - What exactly is required? Exclusive HML data: The potential impact of IFRS9

Building statistical models and scorecards. Data - What exactly is required? Exclusive HML data: The potential impact of IFRS9 IFRS9 white paper Moving the credit industry towards account-level provisioning: how HML can help mortgage businesses and other lenders meet the new IFRS9 regulation CONTENTS Section 1: Section 2: Section

More information

Model Maestro. Scorto TM. Specialized Tools for Credit Scoring Models Development. Credit Portfolio Analysis. Scoring Models Development

Model Maestro. Scorto TM. Specialized Tools for Credit Scoring Models Development. Credit Portfolio Analysis. Scoring Models Development Credit Portfolio Analysis Scoring Models Development Scorto TM Models Analysis and Maintenance Model Maestro Specialized Tools for Credit Scoring Models Development 2 Purpose and Tasks to Be Solved Scorto

More information

The changing face of installment lending

The changing face of installment lending The changing face of installment lending Experian and the marks used herein are service marks or registered trademarks of Experian Information Solutions, Inc. Other product and company names mentioned

More information

Kenneth Temkin and Neil Mayer September 19, 2013

Kenneth Temkin and Neil Mayer September 19, 2013 Kenneth Temkin and Neil Mayer September 19, 2013 Methodology Results Interpreting the Results Neil Mayer and Associates 2 We used information on clients who received pre-purchase counseling from NeighborWorks

More information

CFPB Data Point: Becoming Credit Visible

CFPB Data Point: Becoming Credit Visible June 2017 CFPB Data Point: Becoming Credit Visible The CFPB Office of Research p Kenneth P. Brevoort p Michelle Kambara This is another in an occasional series of publications from the Consumer Financial

More information

U.S. REIT Credit Rating Methodology

U.S. REIT Credit Rating Methodology U.S. REIT Credit Rating Methodology Morningstar Credit Ratings August 2017 Version: 1 Contents 1 Overview of Methodology 2 Business Risk 6 Morningstar Cash Flow Cushion 6 Morningstar Solvency 7 Distance

More information

The CreditRiskMonitor FRISK Score

The CreditRiskMonitor FRISK Score Read the Crowdsourcing Enhancement white paper (7/26/16), a supplement to this document, which explains how the FRISK score has now achieved 96% accuracy. The CreditRiskMonitor FRISK Score EXECUTIVE SUMMARY

More information

The State of Alternative Credit Data. How the financial services industry is adopting and benefiting from these new data sources

The State of Alternative Credit Data. How the financial services industry is adopting and benefiting from these new data sources The State of Alternative Credit Data How the financial services industry is adopting and benefiting from these new data sources Introduction The state of alternative credit data Defining What is it? What

More information

A COMPARATIVE STUDY OF DATA MINING TECHNIQUES IN PREDICTING CONSUMERS CREDIT CARD RISK IN BANKS

A COMPARATIVE STUDY OF DATA MINING TECHNIQUES IN PREDICTING CONSUMERS CREDIT CARD RISK IN BANKS A COMPARATIVE STUDY OF DATA MINING TECHNIQUES IN PREDICTING CONSUMERS CREDIT CARD RISK IN BANKS Ling Kock Sheng 1, Teh Ying Wah 2 1 Faculty of Computer Science and Information Technology, University of

More information

Accelerating Revenue with Customer Centric Offers

Accelerating Revenue with Customer Centric Offers Accelerating Revenue with Customer Centric Offers The evolution of customer-centric cross-sell Chandresh Modi, Equifax Vice President, Professional Services Technology and Analytical Services May 2012

More information

Chapter 11. Evaluating Consumer Loans

Chapter 11. Evaluating Consumer Loans Chapter 11 Evaluating Consumer Loans Recent trends in consumer lending Credit scoring more lenders use statistical models to predict which individuals are good and bad credit risks. Rapid consolidation

More information

Credit Market Consequences of Credit Flag Removals *

Credit Market Consequences of Credit Flag Removals * Credit Market Consequences of Credit Flag Removals * Will Dobbie Benjamin J. Keys Neale Mahoney July 7, 2017 Abstract This paper estimates the impact of a credit report with derogatory marks on financial

More information

Predicting and Preventing Credit Card Default

Predicting and Preventing Credit Card Default Predicting and Preventing Credit Card Default Project Plan MS-E2177: Seminar on Case Studies in Operations Research Client: McKinsey Finland Ari Viitala Max Merikoski (Project Manager) Nourhan Shafik 21.2.2018

More information

Exploring specialty finance data

Exploring specialty finance data Exploring specialty finance data Introducing: John Lodmell Advance America Paul DeSaulniers Experian Crissy Wallace Experian Contents CFPB proposal Data analysis Business impact and the market ahead 3

More information

Making Predictive Modeling Work for Small Commercial Insurance Risk Assessment

Making Predictive Modeling Work for Small Commercial Insurance Risk Assessment WHITE PAPER Making Predictive Modeling Work for Small Commercial Insurance Risk Assessment Best practices from LexisNexis Risk Solutions AUGUST 2017 Executive Summary While predictive modeling has proven

More information

Examining Long-Term Trends in Company Fundamentals Data

Examining Long-Term Trends in Company Fundamentals Data Examining Long-Term Trends in Company Fundamentals Data Michael Dickens 2015-11-12 Introduction The equities market is generally considered to be efficient, but there are a few indicators that are known

More information

Combining Financial Management and Collections to Increase Revenue and Efficiency

Combining Financial Management and Collections to Increase Revenue and Efficiency Experience the commitment SOLUTION BRIEF FOR CGI ADVANTAGE ERP CLIENTS Combining Financial Management and Collections to Increase Revenue and Efficiency CGI Advantage ERP clients have a unique opportunity

More information

Is Growing Student Loan Debt Impacting Credit Risk?

Is Growing Student Loan Debt Impacting Credit Risk? Is Growing Student Loan Debt Impacting Credit Risk? New research shows that student loan debt has increased dramatically and student loans are riskier than before Number 65 January 2013 As US students

More information

IDAnalytics Comply360. Improving operational efficiencies and regulatory compliance in the customer onboarding process

IDAnalytics Comply360. Improving operational efficiencies and regulatory compliance in the customer onboarding process Improving operational efficiencies and regulatory compliance in the customer onboarding process August, 2012 Introduction The regulatory landscape today It is no secret that financial organizations are

More information

Articles and Whitepapers on Collection & Recovery

Articles and Whitepapers on Collection & Recovery Collection Scoring This article explores the scoring technologies utilised for defaulting accounts. Best practice collection strategies apply the most appropriate scoring technology, depending on the status

More information

December 2015 Prepared by:

December 2015 Prepared by: CU Answers Score Validation Study December 2015 Prepared by: No part of this document shall be reproduced or transmitted without the written permission of Portfolio Defense Consulting Group, LLC. Use of

More information

ALTERNATIVE DATA TRENDS GIVE INTELLIGENCE TO LENDERS

ALTERNATIVE DATA TRENDS GIVE INTELLIGENCE TO LENDERS ALTERNATIVE DATA TRENDS GIVE INTELLIGENCE TO LENDERS FEBRUARY 2016 The Alternative Credit Bureau National experts agree that a full 20 percent of U.S. households or nearly 50 million consumers -- are underbanked,

More information

An Overview of Credit Report/Credit Score Models and a Proposal for Vietnam

An Overview of Credit Report/Credit Score Models and a Proposal for Vietnam VNU Journal of Science: Policy and Management Studies, Vol. 33, No. 2 (2017) 36-45 An Overview of Credit Report/Credit Score Models and a Proposal for Vietnam Le Duc Thinh * VNU International School, Building

More information

Indirect auto lending at the crossroads Strategic implications of the CFPB s guidance on indirect auto lending and Equal Credit Opportunity Act

Indirect auto lending at the crossroads Strategic implications of the CFPB s guidance on indirect auto lending and Equal Credit Opportunity Act Indirect auto lending at the crossroads Strategic implications of the CFPB s guidance on indirect auto lending and Equal Credit Opportunity Act compliance Exhibit 1. Originations - Auto loans to second

More information

Maximizing the Credit Universe

Maximizing the Credit Universe SM JUNE 2015 Maximizing the Credit Universe Contents It s not just the value of the score that defines the credit accessible universe 1 From the credit eligible universe to the credit accessible universe

More information

How Can Life Insurers Improve the Performance of Their In-Force Portfolios?

How Can Life Insurers Improve the Performance of Their In-Force Portfolios? Third in a series of four How Can Life Insurers Improve the Performance of Their In-Force Portfolios? A Systematic Approach Covering All Drivers Is Essential By Andrew Harley and Ian Farr In-force portfolios

More information

Best Practices in SCAP Modeling

Best Practices in SCAP Modeling Best Practices in SCAP Modeling Dr. Joseph L. Breeden Chief Executive Officer Strategic Analytics November 30, 2010 Introduction The Federal Reserve recently announced that the nation s 19 largest bank

More information

An Empirical Study on Default Factors for US Sub-prime Residential Loans

An Empirical Study on Default Factors for US Sub-prime Residential Loans An Empirical Study on Default Factors for US Sub-prime Residential Loans Kai-Jiun Chang, Ph.D. Candidate, National Taiwan University, Taiwan ABSTRACT This research aims to identify the loan characteristics

More information

State of the Automotive Finance Market

State of the Automotive Finance Market State of the Automotive Finance Market A look at loans and leases in Q1 2018 Presented by: Melinda Zabritski Sr. Director, Financial Solutions www.experian.com/automotive 2018 Experian Information Solutions,

More information

Envestnet Yodlee Risk Insight Solutions

Envestnet Yodlee Risk Insight Solutions WHITEPAPER Envestnet Yodlee Risk Insight Solutions Envestnet Yodlee Risk Insight Solutions are designed to use consumer permissioned data specifically for credit and lending use cases within an FCRA compliance

More information

Model Maestro. Scorto. Specialized Tools for Credit Scoring Models Development. Credit Portfolio Analysis. Scoring Models Development

Model Maestro. Scorto. Specialized Tools for Credit Scoring Models Development. Credit Portfolio Analysis. Scoring Models Development Credit Portfolio Analysis Scoring Models Development Scorto TM Models Analysis and Maintenance Model Maestro Specialized Tools for Credit Scoring Models Development 2 Purpose and Tasks to Be Solved Scorto

More information

Forecasting Portfolio Performance in an Uncertain Economy

Forecasting Portfolio Performance in an Uncertain Economy Economic Environment Forecasting Portfolio Performance in an Uncertain Economy In an uncertain environment, having a forecasting process in place to assess risk makes good business sense. by Jeffrey S.

More information

Credit Market Consequences of Credit Flag Removals *

Credit Market Consequences of Credit Flag Removals * Credit Market Consequences of Credit Flag Removals * Will Dobbie Benjamin J. Keys Neale Mahoney June 5, 2017 Abstract This paper estimates the impact of a bad credit report on financial outcomes by exploiting

More information

White Paper. Who s Getting Paid During the Subprime Crisis?

White Paper. Who s Getting Paid During the Subprime Crisis? > White Paper Who s Getting Paid During the Subprime Crisis? Jennifer Christensen, Senior Consultant Yara Rogers-Silva, Consulting Statistician III May 2008 Table of Contents Executive Summary........................................

More information

Macroeconomic conditions and equity market volatility. Benn Eifert, PhD February 28, 2016

Macroeconomic conditions and equity market volatility. Benn Eifert, PhD February 28, 2016 Macroeconomic conditions and equity market volatility Benn Eifert, PhD February 28, 2016 beifert@berkeley.edu Overview Much of the volatility of the last six months has been driven by concerns about the

More information

Keeping Fintech Fair: Thinking about Fair Lending and UDAP Risks

Keeping Fintech Fair: Thinking about Fair Lending and UDAP Risks Keeping Fintech Fair: Thinking about Fair Lending and UDAP Risks Outlook Live Webinar July 16, 2018 Carol A. Evans Associate Director Div. of Consumer & Community Affairs Federal Reserve Board Katrina

More information

Keeping Fintech Fair: Thinking about Fair Lending and UDAP Risks

Keeping Fintech Fair: Thinking about Fair Lending and UDAP Risks Keeping Fintech Fair: Thinking about Fair Lending and UDAP Risks Outlook Live Webinar July 16, 2018 Carol A. Evans Associate Director Div. of Consumer & Community Affairs Federal Reserve Board Katrina

More information

Credit Risk Scoring - Basics

Credit Risk Scoring - Basics Credit Risk Scoring - Basics Charles Dafler, Credit Risk Solutions Specialists, Moody s Analytics Mehna Raissi, Credit Risk Product Management, Moody s Analytics NCCA Conference February 2016 Setting the

More information

Eight Ways to Measure Financial Health

Eight Ways to Measure Financial Health Eight Ways to Measure Financial Health April 2016 Leading the Nation in Consumer Financial Health MEMBERSHIP CONSULTING RESEARCH INNOVATION EVENTS IMPACT 8 Ways to Measure Financial Health How Banks, Credit

More information

Attract and retain more high-quality customers while reducing your risks.

Attract and retain more high-quality customers while reducing your risks. HOW TO ASSESS THE CREDIT RISK OF NEW IMMIGRANTS Attract and retain more high-quality customers while reducing your risks. EXECUTIVE SUMMARY With approximately 250, new immigrants arriving in Canada every

More information

Econ 321 Group Project EVIDENCE OF DISCRIMINATION IN MORTGAGE LENDING B Y H E L E N F. L A D D

Econ 321 Group Project EVIDENCE OF DISCRIMINATION IN MORTGAGE LENDING B Y H E L E N F. L A D D Econ 321 Group Project EVIDENCE OF DISCRIMINATION IN MORTGAGE LENDING B Y H E L E N F. L A D D Goals of Paper Show that discrimination models can prove that there is discrimination in mortgage lending

More information

How Are Credit Line Decreases Impacting Consumer Credit Risk?

How Are Credit Line Decreases Impacting Consumer Credit Risk? How Are Credit Line Decreases Impacting Consumer Credit Risk? As lenders reduce or close credit lines to mitigate exposure, new research explores its impact on FICO scores Number 22 August 2009 With recent

More information

Quantitative and Qualitative Disclosures about Market Risk.

Quantitative and Qualitative Disclosures about Market Risk. Item 7A. Quantitative and Qualitative Disclosures about Market Risk. Risk Management. Risk Management Policy and Control Structure. Risk is an inherent part of the Company s business and activities. The

More information

It s time to work harder AND smarter

It s time to work harder AND smarter _experience the commitment TM It s time to work harder AND smarter By Bob Landry, Director of Strategy for CGI s Banking & Financial Market Sector Originally published by FST (Financial Services and Technology)

More information