International Journal of Scientific & Technical Development - Volumes & Issues - Volume 7: June 2021, Issue 1

Novel technique of Anti-Money Laundering Using Deep Learning

Authors

Sharanpreet Kaur, Navneet Kaur Sandhu

DOI Number

Keywords

Deep Learning

Abstract

With the advancement of technology, the potential risk of Money laundering is also increased significantly; Advance deep learning techniques with availability of big data can be seen as a promising solution to protect money laundering. In this paper we have proposed a deep learning based anti-money laundering algorithm. The algorithm is being tested on publically available data-set. And the performance of proposed algorithm has shown the state of art accuracy. The performance of proposed deep learning algorithm has been compared with other Machine learning algorithm and proposed deep learning algorithm outperformed the rest of the algorithms.

References

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How to cite

Journal

International Journal of Scientific & Technical Development

ISSN

2348-4047

Periodicity

Bi-Annual