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Investigation of Credit Card Fraud Recognition Techniques based on KNN and HMM

Published on June 2018 by N. Malini, M. Pushpa
International Conference on Communication, Computing and Information Technology
Foundation of Computer Science USA
ICCCMIT2017 - Number 1
June 2018
Authors: N. Malini, M. Pushpa
62dbe625-4ea2-4301-a25c-64e76331575d

N. Malini, M. Pushpa . Investigation of Credit Card Fraud Recognition Techniques based on KNN and HMM. International Conference on Communication, Computing and Information Technology. ICCCMIT2017, 1 (June 2018), 9-13.

@article{
author = { N. Malini, M. Pushpa },
title = { Investigation of Credit Card Fraud Recognition Techniques based on KNN and HMM },
journal = { International Conference on Communication, Computing and Information Technology },
issue_date = { June 2018 },
volume = { ICCCMIT2017 },
number = { 1 },
month = { June },
year = { 2018 },
issn = 0975-8887,
pages = { 9-13 },
numpages = 5,
url = { /proceedings/icccmit2017/number1/29477-1707/ },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Proceeding Article
%1 International Conference on Communication, Computing and Information Technology
%A N. Malini
%A M. Pushpa
%T Investigation of Credit Card Fraud Recognition Techniques based on KNN and HMM
%J International Conference on Communication, Computing and Information Technology
%@ 0975-8887
%V ICCCMIT2017
%N 1
%P 9-13
%D 2018
%I International Journal of Computer Applications
Abstract

Popular payment mode accepted both offline and online is credit card that provides cashless transaction. It is easy, convenient and trendy to make payments and other transactions. Demonetization process operated by India's Prime Minister Narendra Modi seems to be taken major changes in cashless economy. Credit card fraud is also growing along with the development in technology. It can also be said that economic fraud is drastically increasing in the global communication improvement. It is being recorded every year that the loss due to these fraudulent acts is billions of dollars. These activities are carried out so elegantly so that it is similar to genuine transactions. Hence simple pattern related techniques and other less complex methods are really not going to work. Having an efficient method of fraud detection has become a need for all banks in order to minimize chaos and bring order in place. There are several techniques like Machine learning, Genetic Programming, fuzzy logic, sequence alignment, etc are used for detecting credit card fraudulent transactions. Along with these techniques, KNN algorithm and HIDDEN MARKOV MODEL is implemented to optimize the best solution for the problem. This approach is proved to minimize the false alarm rates and increase the fraud detection rate. Moreover the behaviour analysis process of the HMM method helps in minimizing the fraud rates thus retaliate further fraudulent activities more efficiently.

References
  1. A. J. Graaff A. P. Engelbrecht Agraaff "The Artificial Immune System For Fraud Detection In The Telecommunications Environment" 20 November 2014
  2. Abhinav Srivastava, Amlan Kundu, Shamik Sural, And Arun K. Majumdar" Credit Card Fraud Detection Using Hidden Markov Model" VOL. 5, NO. 1, JANUARY-MARCH 2008
  3. Divya. Iyer,Arti Mohanpurkar, Sneha Janardhan, Dhanashree Rathod,Amruta Sardeshmukh" Credit Card Fraud Detection Using Hidden Markov Model " 978-1-4673-0126-8/11/$26. 00_C 2011 IEEE
  4. K. Ramakalyani, D. Umadevi" Fraud Detection Of Credit Card Payment System By Genetic Algorithm" Volume 3, Issue 7, July-2012.
  5. Renu, Suman" Analysis On Credit Card Fraud Detection Methods" Volume 8 Number 1– Feb 2014
  6. Ekrem Duman, M. Hamdi Ozcelik "Detecting Credit Card Fraud By Genetic Algorithm And Scatter Search". Elsevier, Expert Systems With Applications, (2011). 38; (13057–13063).
  7. S. Benson Edwin Raj, A. Annie Portia, "Analysis On Credit Card Fraud Detection Methods", International Conference On Computer, Communication And Electrical Technology – ICCCET2011, 18th & 19th March, 2011
  8. Y. Sahin And E. Duman, "Detecting Credit Card Fraud By Decision Trees And Support Vector Machines", International Multiconference Of Engineers And Computer Scientists March, 2011.
  9. S. Benson Edwin Raj, A. Annie Portia "Analysis On Credit Card Fraud Detection Methods". "IEEE-International Conference On Computer, Communication And Electrical Technology"; (2011). (152-156).
  10. Eswari. M,Navaneetha,Krishnan. M. " Survey On Various Types Of Credit Card Fraud And Security Measures", International Journal Of Advanced Research In Computer Science And Software Engineering , Volume 4, Issue 1, January 2014, Pg. 1235 – 1238.
  11. Anika Nahar,Sharmistha Roy,"A Survey On Different Approaches Used For Credit Card Fraud Detection", International Journal Of Applied Information Systems (IJAIS) – Foundation Of Computer Science FCS, New York, USA Volume 10 – No. 4, January 2016,Pg. 29 – 34
  12. Priya Ravindra Shimpi, Prof. Vijayalaxmi Kadroli ,"Survey On Credit Card Fraud Detection Techniques", International Journal Of Engineering And Computer Scienc,Volume 4 Issue 11 Nov 2015, Page No. 15010-15015
  13. Anshul Singh, Devesh Narayan "A Survey On Hidden Markov Model For Credit Card Fraud Detection". International Journal Of Engineering And Advanced Technology (IJEAT), (2012). Volume-1, Issue-3; (49-52).
  14. V. Dheepa, Dr. R . Dhanapal "Analysis Of Credit Card Fraud Detection Methods". International Journal Of Recent Trends In Engineering, (2009). Vol 2, No. 3; (126-128)
Index Terms

Computer Science
Information Sciences

Keywords

Classification Fraud Detection K-nearest Neighbor Algorithm Hidden Markov Model