Decision Tree Approach to Discovering Fraud in Leasing Agreements

Authors

  • Ivan Horvat VB Leasing d.o.o., Croatia
  • Mirjana Pejić Bach Faculty of Economics & Business – Zagreb, University of Zagreb, Croatia
  • Marjana Merkač Skok Fakulteta za poslovne in komercijalne vede, Slovenia

Keywords:

decision tree, fraud detection, leasing fraud, cars, data mining, leasing agreements

Abstract

Background: Fraud attempts create large losses for financing subjects in modern economies. At the same time, leasing agreements have become more and more popular as a means of financing objects such as machinery and vehicles, but are more vulnerable to fraud attempts. Objectives: The goal of the paper is to estimate the usability of the data mining approach in discovering fraud in leasing agreements. Methods/Approach: Real-world data from one Croatian leasing firm was used for creating tow models for fraud detection in leasing. The decision tree method was used for creating a classification model, and the CHAID algorithm was deployed. Results: The decision tree model has indicated that the object of the leasing agreement had the strongest impact on the probability of fraud. Conclusions: In order to enhance the probability of the developed model, it would be necessary to develop software that would enable automated, quick and transparent retrieval of data from the system, processing according to the rules and displaying the results in multiple categories.

Creative Commons License
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.

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Published

2014-09-30

Issue

Section

Research Articles