Hybrid Deep Learning Based Stock Market Prediction with both Sentiment and Historic Trend Data

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Abstract

Stock market is highly volatile and it is necessary for investors to have an accurate prediction of stock prices for a better profitability. Towards this need many methods have been proposed for stock market prediction with aim to provide a higher prediction accuracy. Current methods for stock market prediction are in two categories of machine learning and statistics based. Considering the need for accurate prediction in short term and long term, the merits of both methods must be combined for accurate prediction. This work proposes a hybrid deep learning approach for stock market prediction which combines the historic price-based trend forecasting along with stock market sentiments expressed in twitter to predict the stock price trend.

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S*, Mr. G., Mr. Sahilverma, & H, Dr. C. (2020). Hybrid Deep Learning Based Stock Market Prediction with both Sentiment and Historic Trend Data. International Journal of Innovative Technology and Exploring Engineering, 9(4), 1166–1171. https://doi.org/10.35940/ijitee.d1505.029420

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