1. Stock market price prediction using neural networks (LSTM) and technical indicators.
- Author
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Varma P, Krishna Kanth, Kanumuri, Chalapathiraju, Devi, S. Sushma, and Sontenam, Tataji
- Subjects
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ARTIFICIAL neural networks , *INVESTORS , *STOCK prices , *MARKET prices , *MOVING average process - Abstract
In recent years there has been a growing interest in stock market investment as it helps to accumulate wealth for investors, which tends to beat the returns obtained by traditional investment instruments (Fixed deposits, PPF etc.). But investors are not aware of the stock market behavior i.e., they do not know which stocks to buy or to sell to gain profit. Considering this problem and the opportunity to use Neural Networks for prediction, in this project we have developed a neural network model using LSTM and trained the model with different stock market indicators data as input (for various stocks like TCS, INFOSYS, HDFC, and DIVISLAB) for an accurate prediction of the stock prices. The indicators used are RSI and Moving Averages. This model now predicts the closing price of the next day which helps the investors to select the stocks to invest in, that bring profit. Also, a comparison is made to identify the best indicator, giving more accurate results. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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