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Varieties Statistical Fraud Models: 30 Models in 30 Minutes Daniel Finnegan, CFE ISO Innovative Analytics Quality Planning Corporation.

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Presentation on theme: "Varieties Statistical Fraud Models: 30 Models in 30 Minutes Daniel Finnegan, CFE ISO Innovative Analytics Quality Planning Corporation."— Presentation transcript:

1 Varieties Statistical Fraud Models: 30 Models in 30 Minutes Daniel Finnegan, CFE ISO Innovative Analytics Quality Planning Corporation

2 Benford’s Law in Accounting Fraud

3 Tests for Manufacture Numbers  Frequency or equidistribution test (possible elements should occur with equal frequency);  Serial test (pairs of elements should be equally likely to be in descending and ascending order);  Gap test (runs of elements all greater or less than some fixed value should have lengths that follow a binomial distribution);  Coupon collector's test (runs before complete sets of values are found should have lengths that follow a definite distribution);  Permutation test (in blocks of elements possible orderings of values should occur equally often);  Runs up test (runs of monotonically increasing elements should have lengths that follow a definite distribution);  Maximum-of-t test (maximum values in blocks of elements should follow a power-law distribution).

4 IRS Audit Selection System 1964 Rule-Based Scoring System 1970’s TCMP Statistical Audit System 2003 NRP System: A.Random Audits of Sample of Returns B.Identification of Returns “In Need of Examine” C.Statistical Model of DIF score of “Probability of Need to Examine” D.Monitoring and Update of System

5 Text Mining for Fraudulent Medical Bills  Search for identical typos  Search for identical prognosis  Search for date discrepancies  Holidays  Claimant out of town/dead

6 Medical Usage Pattern Fraud Analysis  Uniformly high numbers of treatments (Normed on Diagnosis)  High number of modalities per treatment  Few Patients Recover Quickly  Low Percentage of Objective Injuries  Treatment Ends Abruptly at Payment of Claim

7 FAIS Money Laundering Statistical Detection  Link Analysis with Known Criminal Elements  Pattern Analysis such as Large Sum Deposited and Immediately Withdrawn  Benford Distribution of Deposits and Withdrawals  Circular Movements of Funds

8 Network Analysis of Auto Accidents

9 Staged Accident Ring

10 Sequential Handling of Questionable Claims  Random Sample of 3,000 BI Claims  Decision Flow Model

11 Timing Claims Curves

12 Other Threshold Fraud Models  Adding Coverage for Comp  Two-Year New Vehicle Replacement  School Lunch Eligibility

13 Deviant Purchase Patterns for Credit Card Fraud  Identification of Individual Purchase Patterns (Neural Net Models)  Identification of Typical Fraud Purchase Patterns (Electronics, International Spending)  Movement out of Typical Toward Fraud Patterns  Expert Patterns Such Geographic Dispersion of Purchases

14 Geographic Analysis of Staged Accidents

15

16 Driver’s License Translator Fraud  Pass Rate:  51% vs 95+%  Time to Complete  30-60 Minutes vs 10-15 Minutes

17 Insider Stock Dealing  MonITARS: Fuzzy Logic, Neural Nets, Genetic Algorithms for London Stock Exchange  Advanced Detection System (ADS) for Nasdaq matches rule-based sequential trading patterns  SONAR matches wire stories to stock trading using pattern analysis to detect stock manipulation

18 WC Premium Audit Selection Model  Statistical Modeling of 4 Years of Audit Results  Holdback of 5 th Year of Results  Combined Expert Theory and Inductive Modeling  Final Model Built with Multiple Statistical Methods:  Decision Trees, MARS, GLM  Model Concentrated on Key Ratios by Industry  Results more than Doubled Audit Returns

19 University Student Aid Fraud  Very High and Similar Hardship Deductions (High Medical Bills)  Identical Applications for Student Financial Aid (High Aid with No Audit)  Fraud Clusters by Successful Sports Teams

20 Work Load Analysis of Medical Billing Fraud  Psychiatrist billing 80 hour work days  Billing on 365 day years  Billing from distant locations  Billing for 200 patients per day

21 Adjuster – Vendor Pairing Models  Billing Pattern Analysis for 5 Million Claims and 12 Million Payments  Dozen Questionable Patterns Identified:  Relative High Payment Average for Adjuster and Vendor  Identification of Vendors with Multiple Payments to PO Box with Single Adjuster

22 Social Security Disability Model  Random Sample File Review  Identified Decision Errors/Fraud  Built Multiple Models  Econometric  Decision Trees, GLM, Hybrid  Rule Violation  Decision Maker Focused  Final Artificial Intelligence Model

23 Sales Agent Rating Models  Sales Agents Mileage Model  Low to Expectations  Below Rating Cut Points  Missing Drivers  Teenagers Low to Expectations  High Permissive Use Claims  Frequent Claims After Comp Added

24 Food Stamp Store Investigation System  Prior System Viewed as a Success  Random Investigation of 2,000 Stores  Statistical Analysis of Discovered Violations

25 Food Stamp Investigation Outcomes

26 VIPER System  Statistical Pattern Targeting  Random Component for Updating  Geographic Clustering Component  Tripled Discovered Violations  Doubled Investigator Productivity

27 Thresholding Cell Phone Accounts  6-8 Percent Cell Phone Costs Fraudulent  High Volume of Calls and Turnover of Fraud Requires Rapid Response  Account “Thresholding” Process Used  30-Day, Fraud Free, Norming Process  Account Specific Expert Rules on Duration, Location, Timing  Calls Scored Statistical Distance from Norms  Percent of Potential Fraud Calls Monitored  Norms Constantly Updated

28 Identity Theft Scoring Scoring System Includes Variety of Data Matching and Pattern Analysis Variables  High Numbers of Credit Card or Cell Phone Applications from Address  Identity Variable Conflicts  Mail Drop Address  Impossible SSN Dead, Issued Before Born, Un-issued, Impossible

29 Statistical Adjuster Assignment Models  Review of Areas of Fraud Loss  Identification of Best Practices for Handling Questionable Claims  Sample Investigation of Matched Samples of 1,500 Standard Handling and 1,500 Enhanced Handling  Statistical Modeling of Handling Gains

30 Statistical Adjuster Assignment Models

31 Common Elements of Successful Statistical Fraud Control  Statistical Methods Selected to Fit the Problem (One Size Does Not Fit All)  High Input from Substance Area Experts  Feedback Loop Evaluates and Updates System  Strong Integration with Operations


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