STCLLGAug 30, 2019

Tehran Stock Exchange Prediction Using Sentiment Analysis of Online Textual Opinions

arXiv:1909.03792v219 citations
AI Analysis

This work addresses stock market prediction for investors in Iran by applying sentiment analysis to Persian social media data, but it is incremental as it adapts existing methods to a new domain.

The paper tackled predicting Tehran Stock Exchange variables by analyzing social media sentiment, finding that comment volume helps predict closing prices, while both volume and sentiment aid in predicting daily returns, with specific impacts varying by stock.

In this paper, we investigate the impact of the social media data in predicting the Tehran Stock Exchange (TSE) variables for the first time. We consider the closing price and daily return of three different stocks for this investigation. We collected our social media data from Sahamyab.com/stocktwits for about three months. To extract information from online comments, we propose a hybrid sentiment analysis approach that combines lexicon-based and learning-based methods. Since lexicons that are available for the Persian language are not practical for sentiment analysis in the stock market domain, we built a particular sentiment lexicon for this domain. After designing and calculating daily sentiment indices using the sentiment of the comments, we examine their impact on the baseline models that only use historical market data and propose new predictor models using multi regression analysis. In addition to the sentiments, we also examine the comments volume and the users' reliabilities. We conclude that the predictability of various stocks in TSE is different depending on their attributes. Moreover, we indicate that for predicting the closing price only comments volume and for predicting the daily return both the volume and the sentiment of the comments could be useful. We demonstrate that Users' Trust coefficients have different behaviors toward the three stocks.

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