Data analysis techniques for fraud detection

Fraud is a billion-dollar business and it is increasing every year. The PwC global economic crime survey of 2009 suggests that close to 30 percent of companies worldwide have reported being victims of fraud in the past year.[1]

Fraud involves one or more persons who intentionally act secretly to deprive another of something of value, for their own benefit. Fraud is as old as humanity itself and can take an unlimited variety of different forms. However, in recent years, the development of new technologies has also provided further ways in which criminals may commit fraud.[2] In addition to that, business reengineering, reorganization or downsizing may weaken or eliminate control, while new information systems may present additional opportunities to commit fraud.

Detecting fraud

Traditional methods of data analysis have long been used to detect fraud. They require complex and time-consuming investigations that deal with different domains of knowledge like financial, economics, business practices and law. Fraud often consists of many instances or incidents involving repeated transgressions using the same method. Fraud instances can be similar in content and appearance but usually are not identical.[3]

The first industries to use data analysis techniques to prevent fraud were the telephony companies, the insurance companies and the banks (Decker 1998). One early example of successful implementation of data analysis techniques in the banking industry is the FICO Falcon fraud assessment system, which is based on a neural network shell.

Retail industries also suffer from fraud at POS. Some supermarkets have started to make use of digitized closed-circuit television (CCTV) together with POS data of most susceptible transactions to fraud.

Internet transactions have recently raised big concerns, with some research showing that internet transaction fraud is 12 times higher than in-store fraud.

Fraud that involves cell phones, insurance claims, tax return claims, credit card transactions etc. represent significant problems for governments and businesses, but yet detecting and preventing fraud is not a simple task. Fraud is an adaptive crime, so it needs special methods of intelligent data analysis to detect and prevent it. These methods exist in the areas of Knowledge Discovery in Databases (KDD), Data Mining, Machine Learning and Statistics. They offer applicable and successful solutions in different areas of fraud crimes.

Techniques used for fraud detection fall into two primary classes: statistical techniques and artificial intelligence.[3] Examples of statistical data analysis techniques are:

Some forensic accountants specialize in forensic analytics which is the procurement and analysis of electronic data to reconstruct, detect, or otherwise support a claim of financial fraud. The main steps in forensic analytics are (a) data collection, (b) data preparation, (c) data analysis, and (d) reporting. For example, forensic analytics may be used to review an employee's purchasing card activity to assess whether any of the purchases were diverted or divertible for personal use. Forensic analytics might be used to review the invoicing activity for a vendor to identify fictitious vendors, and these techniques might also be used by a franchisor to detect fraudulent or erroneous sales reports by the franchisee in a franchising environment.[4]

Fraud management is a knowledge-intensive activity. The main AI techniques used for fraud management include:

Other techniques such as link analysis, Bayesian networks, decision theory, land sequence matching are also used for fraud detection.[3]

The younger companies in the fraud prevention space tend to rely on systems that have been based around machine learning, rather than later incorporating machine learning into an existing system. These companies include Feedzai, Forter, Sift Science, Signifyd and Riskified, Experian.

Machine learning and data mining

Main articles: Machine learning and Data mining

Early data analysis techniques were oriented toward extracting quantitative and statistical data characteristics. These techniques facilitate useful data interpretations and can help to get better insights into the processes behind the data. Although the traditional data analysis techniques can indirectly lead us to knowledge, it is still created by human analysts.[5]

To go beyond, a data analysis system has to be equipped with a substantial amount of background knowledge, and be able to perform reasoning tasks involving that knowledge and the data provided.[5] In effort to meet this goal, researchers have turned to ideas from the machine learning field. This is a natural source of ideas, since the machine learning task can be described as turning background knowledge and examples (input) into knowledge (output).

If data mining results in discovering meaningful patterns, data turns into information. Information or patterns that are novel, valid and potentially useful are not merely information, but knowledge. One speaks of discovering knowledge, before hidden in the huge amount of data, but now revealed.

Supervised and unsupervised learning

The machine learning and artificial intelligence solutions may be classified into two categories: 'supervised' and 'unsupervised' learning. These methods seek for accounts, customers, suppliers, etc. that behave 'unusually' in order to output suspicion scores, rules or visual anomalies, depending on the method.[2]

Whether supervised or unsupervised methods are used, note that the output gives us only an indication of fraud likelihood. No stand alone statistical analysis can assure that a particular object is a fraudulent one. It can only indicate that this object is more likely to be fraudulent than other objects.

Supervised methods

Main article: Supervised learning

In supervised learning, a random sub-sample of all records is taken and manually classified as either 'fraudulent' or 'non-fraudulent'. Relatively rare events such as fraud may need to be over sampled to get a big enough sample size. These manually classified records are then used to train a supervised machine learning algorithm. After building a model using this training data, the algorithm should be able to classify new records as either fraudulent or non-fraudulent.

Supervised neural networks, fuzzy neural nets, and combinations of neural nets and rules, have been extensively explored and used for detecting fraud in mobile phone networks and financial statement fraud.[6][7]

Bayesian learning neural network is implemented for credit card fraud detection, telecommunications fraud, auto claim fraud detection, and medical insurance fraud.

Hybrid knowledge/statistical-based systems, where expert knowledge is integrated with statistical power, use a series of data mining techniques for the purpose of detecting cellular clone fraud. Specifically, a rule-learning program to uncover indicators of fraudulent behaviour from a large database of customer transactions is implemented.[8]

Cahill et al. (2000) design a fraud signature, based on data of fraudulent calls, to detect telecommunications fraud. For scoring a call for fraud its probability under the account signature is compared to its probability under a fraud signature. The fraud signature is updated sequentially, enabling event-driven fraud detection.

Link analysis comprehends a different approach. It relates known fraudsters to other individuals, using record linkage and social network methods.[9][10]

This type of detection is only able to detect frauds similar to those which have occurred previously and been classified by a human. To detect a novel type of fraud may require the use of an unsupervised machine learning algorithm.

Unsupervised methods

Main article: Unsupervised learning

In contrast, unsupervised methods don't make use of labelled records.

Some important studies with unsupervised learning with respect to fraud detection should be mentioned. For example, Bolton and Hand[11] use Peer Group Analysis and Break Point Analysis applied on spending behaviour in credit card accounts. Peer Group Analysis detects individual objects that begin to behave in a way different from objects to which they had previously been similar. Another tool Bolton and Hand[11] develop for behavioural fraud detection is Break Point Analysis. Unlike Peer Group Analysis, Break Point Analysis operates on the account level. A break point is an observation where anomalous behaviour for a particular account is detected. Both the tools are applied on spending behaviour in credit card accounts.

Also, Murad and Pinkas[12] focus on behavioural changes for the purpose of fraud detection and present three-level-profiling. Three-level-profiling method operates at the account level and points to any significant deviation from an account's normal behaviour as a potential fraud. In order to do this, 'normal' profiles are created based on data without fraudulent records (semi supervised). In the same field, also Burge and Shawe-Taylor[13] use behaviour profiling for the purpose of fraud detection. However, using a recurrent neural network for prototyping calling behaviour, unsupervised learning is applied.

Cox et al.[14] combines human pattern recognition skills with automated data algorithms. In their work, information is presented visually by domain-specific interfaces, combining human pattern recognition skills with automated data algorithms (Jans et al.).

See also

References

  1. PricewaterhouseCoopers LLP (2009). "2009 Global Economic Crime Survey". Retrieved June 29, 2011.
  2. 1 2 Bolton, R. & Hand, D. (2002). Statistical Fraud Detection: A Review (With Discussion). Statistical Science 17(3): 235–255.
  3. 1 2 3 G.K. Palshikar, The Hidden Truth – Frauds and Their Control: A Critical Application for Business Intelligence, Intelligent Enterprise, vol. 5, no. 9, 28 May 2002, pp. 46–51.
  4. Nigrini, Mark (June 2011). "Forensic Analytics: Methods and Techniques for Forensic Accounting Investigations". Hoboken, NJ: John Wiley & Sons Inc. ISBN 978-0-470-89046-2.
  5. 1 2 Michalski, R. S., I. Bratko, and M. Kubat (1998). Machine Learning and Data Mining – Methods and Applications. John Wiley & Sons Ltd.
  6. Green, B. & Choi, J. (1997). Assessing the Risk of Management Fraud through Neural Network Technology. Auditing 16(1): 14–28.
  7. Estevez, P., C. Held, and C. Perez (2006). Subscription fraud prevention in telecommunications using fuzzy rules and neural networks. Expert Systems with Applications 31, 337–344.
  8. Fawcett, T. (1997). AI Approaches to Fraud Detection and Risk Management: Papers from the 1997 AAAI Workshop. Technical Report WS-97-07. AAAI Press.
  9. Phua, C., Lee, V., Smith-Miles, K. and Gayler, R. (2005). A Comprehensive Survey of Data Mining-based Fraud Detection Research. Clayton School of Information Technology, Monash University.
  10. Cortes, C. & Pregibon, D. (2001). Signature-Based Methods for Data Streams. Data Mining and Knowledge Discovery 5: 167–182.
  11. 1 2 Bolton, R. & Hand, D. (2001). Unsupervised Profiling Methods for Fraud Detection. Credit Scoring and Credit Control VII.
  12. Murad, U. & Pinkas, G. (1999). Unsupervised Profiling for Identifying Superimposed Fraud. Proceedings of PKDD'99.
  13. Burge, P. & Shawe-Taylor, J. (2001). An Unsupervised Neural, Network Approach to Profiling the Behaviour of Mobile Phone, Users for Use in Fraud Detection. Journal of Parallel and Distributed Computing 61: 915–925.
  14. Cox, K., Eick, S. & Wills, G. (1997). Visual Data Mining: Recognising Telephone Calling Fraud. Data Mining and Knowledge Discovery 1: 225–231.


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