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Trading Outlier Detection: Machine Learning Approach


Author : Nitin Ghatage and Prashant Ahire

Pages : 195-198
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Abstract

Anomaly detection is typically degree identification of degree odd or abnormal info typically even called as an outlier from a supply pat-laird of data. It involves machine learning technique to be told the data and verify the outliers supported a probability condition. Machine learning, a branch of AI plays a major role in analyzing the data and identifies the outliers with a good probability. The target of this is often to figure out the outlier supported anomaly detection techniques and describe the standard standards of the particular trade. We’ve a bent to explain degree approach to analyzing outliers in trade info supported the identification of cluster outliers.

Keywords: Information Analysis, Machine Learning, Commerce Outlier, Detective System, Machine Learning Proposal

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