Probabilistic Vs. Soft Computing for Classifying Credit Card Transactions. A Case Study of Pakistani's Credit Card Data

Journal Title: Journal of Independent Studies and Research - Computing - Year 2015, Vol 13, Issue 1

Abstract

Credit cards are now widely used by consumers for purchasing various goods and services due to widespread use of internet and consequential growth of E-commerce over the past few decades. This enhanced use of credit cards has increased the associated risks such as fraudulent use of credit cards that can cause financial loss to the card holders as well as to financial institutions. It is an ethical issue and has legal implications in various countries where laws and regulations forces financial intuitions and credit card companies to employ various techniques to detect and prevent the credit card frauds. Although the changes in technological systems also change the nature of frauds but data mining techniques such as classification, regression and clustering are very useful and are widely used to prevent and detect the frauds associated with credit cards. The credit card fraud prevention and detection functionality is a type of classification problem for the new customer as well for existing customers. There are multiple data mining techniques that can be employed for classification of customers and each has its own pros and cons. This study will compare four classification techniques namely Naïve Bayes, Bayesian network, Artificial Neural Network and Artificial Immune Systems for credit card transactions classification on a dataset obtained from a commercial bank in Pakistan. The major contribution of this study is use of real data on which extensive experiments have been performed and various results have been analysed with conclusion of best technique.

Authors and Affiliations

Keywords

Related Articles

Extracting patterns from Global Terrorist Dataset (GTD) Using Co-Clustering approach

Global Terrorist Dataset (GTD) is a vast collection of terrorist activities reported around the globe. The terrorism database incorporates more than 27,000 terrorism incidents from 1968 to 2014. Every record has spatial...

A Review and Comparison of the Traditional Collaborative and Online Collaborative Techniques for Requirement Elicitation

Requirement elicitation is one of the major phases of the software development life cycle. As per authors knowledge, among many reviews, there is no review available on a comparison between Online Collaborative Requireme...

Improving Query Response Time for Graph Data Using Materialization

Graphs are used in many disciplines, from communication networks, biological, social networks includ- ing maths and other fields of science. This is the latest and most important field of computer science today. In this...

The Impending 5G Era and Its Likely Impact on Society

This paper looks at the emergence of the fifth generation of wireless networks, commonly referred to by the acronym 5G, from a perspective informed by the literature on digital divides and digital inequality. 5G has been...

Urdu Optical Character Recognition Technique for Jameel Noori Nastaleeq Script

Urdu OCR's have been an object of interest for many developers in the recent years. Active research is being done pertaining to Urdu OCR’s, but because of the complexity associated with Urdu fonts; it still lacks perfect...

Download PDF file
  • EP ID EP643237
  • DOI 10.31645/jisrc/(2015).13.1.0003
  • Views 141
  • Downloads 0

How To Cite

(2015). Probabilistic Vs. Soft Computing for Classifying Credit Card Transactions. A Case Study of Pakistani's Credit Card Data. Journal of Independent Studies and Research - Computing, 13(1), 14-19. https://europub.co.uk/articles/-A-643237