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Market Trend Prediction using Sentiment Analysis: Lessons Learned and Paths Forward (1903.05440v1)

Published 13 Mar 2019 in cs.CL and cs.CY

Abstract: Financial market forecasting is one of the most attractive practical applications of sentiment analysis. In this paper, we investigate the potential of using sentiment \emph{attitudes} (positive vs negative) and also sentiment \emph{emotions} (joy, sadness, etc.) extracted from financial news or tweets to help predict stock price movements. Our extensive experiments using the \emph{Granger-causality} test have revealed that (i) in general sentiment attitudes do not seem to Granger-cause stock price changes; and (ii) while on some specific occasions sentiment emotions do seem to Granger-cause stock price changes, the exhibited pattern is not universal and must be looked at on a case by case basis. Furthermore, it has been observed that at least for certain stocks, integrating sentiment emotions as additional features into the machine learning based market trend prediction model could improve its accuracy.

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Authors (3)
  1. Andrius Mudinas (1 paper)
  2. Dell Zhang (26 papers)
  3. Mark Levene (24 papers)
Citations (33)

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