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Forecasting Stock Market Volume Price Using Sentimental and Technical Analysis

Forecasting Stock Market Volume Price Using Sentimental and Technical Analysis

Siddesh G. M., S. R. Mani Sekhar, Srinidhi H., K. G. Srinivasa
Copyright: © 2022 |Volume: 15 |Issue: 1 |Pages: 13
ISSN: 1938-7857|EISSN: 1938-7865|EISBN13: 9781683180340|DOI: 10.4018/JITR.299383
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MLA

Siddesh G. M., et al. "Forecasting Stock Market Volume Price Using Sentimental and Technical Analysis." JITR vol.15, no.1 2022: pp.1-13. http://doi.org/10.4018/JITR.299383

APA

Siddesh G. M., Sekhar, S. R., Srinidhi H., & Srinivasa, K. G. (2022). Forecasting Stock Market Volume Price Using Sentimental and Technical Analysis. Journal of Information Technology Research (JITR), 15(1), 1-13. http://doi.org/10.4018/JITR.299383

Chicago

Siddesh G. M., et al. "Forecasting Stock Market Volume Price Using Sentimental and Technical Analysis," Journal of Information Technology Research (JITR) 15, no.1: 1-13. http://doi.org/10.4018/JITR.299383

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Abstract

The stock market volume and price are active areas of research. Behind every dollar of investment, the customer will be hoping for profit in one or the other way. There is a positive correlation between investor sentiment and stock volume. Predicting the stock market is the most difficult task due to the dynamic fluctuation of volume and price. The traditional analysis methods carried out lead to satisfactory results. In this paper, the proposed system uses real-time data from Twitter to detect the user opinion about the product along with the stock volume for prediction. The stock volume data and the Twitter data are collected first, and then the classification of the polarity is carried out using the SentiWordnet dictionary. The algorithm for the prediction of the stock prices uses long short-term memory, a neural network, as the prices are sequentially evolving in nature. The results of the proposed system are correlated between the stock market and Twitter data to obtain better insights that are positive.