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A new stock price prediction method using covariance information

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2017

Authors

Ghorbani, Mahsa, author
Chong, Edwin, author

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Abstract

Stock price prediction is one of the most challenging problems in finance and is receiving considerable attention from researchers. The literature provides strong evidence that prices can be predicted from past price data as well as other fundamental and macroeconomic variables. We propose a filtering operation using covariance information in order to predict future stock prices. We use daily historical price data for Generals Electric Company to illustrate our method, which shows promising results in terms of the estimation performance and volatility.

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