AN ANALYSIS OF OUTLIERS FOR FRAUD DETECTION IN INDIAN STOCK MARKET

Authors

  • Dr. Pankaj Nagar Asstt. Professor, Department of Statistics, University of Rajasthan, Jaipur, India.
  • Gurjeet Singh Research Scholar, Department of Computer Science, Jaggannath University, Rajasthan, India

Keywords:

Outlier Analysis, Data Mining, Stock Market, Fraud Detection

Abstract

Fraud Detection is of great importance to financial institutions. In this paper we have tried to study the Outlier Analysis in Stock Market Fraud Detection. Outlier Analysis is a fundamental issue in Data Mining, specifically in Fraud Detection. While observing the Indian Stock Market, we could detect that some of the Trading Entities have suspicious trading patterns that give rise to a doubt of having some malpractices in stock transactions within Indian Stock Market. All the facts are presented on the basis of data obtained from the official sites of BSE (Bombay Stock Exchange), NSE (National Stock Exchange) and SEBI (Securities and Exchange Board of India).

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Published

06-09-2021

How to Cite

Dr. Pankaj Nagar, & Gurjeet Singh. (2021). AN ANALYSIS OF OUTLIERS FOR FRAUD DETECTION IN INDIAN STOCK MARKET. Researchers World - International Refereed Social Sciences Journal, 3(4(4), 10–15. Retrieved from https://researchersworld.com/index.php/rworld/article/view/775

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