News Impact on Stock Trend

Автор: Protim Dey, Nadia Nahar, B. M. Mainul Hossain

Журнал: International Journal of Education and Management Engineering @ijeme

Статья в выпуске: 6 vol.9, 2019 года.

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Stock market trend can be predicted with the help of machine learning techniques. However, the stock market changes is uncertain. So it is very difficult and challenging to forecast stock price trend. The main goal of this paper is to implement a model for stock value trend prediction using share market news by machine learning techniques. Although this kind of work is implemented for the stock markets of various developed countries, it is not so common to observe such kind of analysis for the stock markets of underdeveloped countries. The model for this work is built on published stock data obtained from DSE (Dhaka Stock Exchange, Bangladesh), a representative stock market of an underdeveloped country. The empirical result reveals the effectiveness of Convolutional Neural Networks with LSTM model.

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Stock price movement, Financial News, ANN, CNN, LSTM, DSE

Короткий адрес: https://sciup.org/15017021

IDR: 15017021   |   DOI: 10.5815/ijeme.2019.06.05

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