Stock Price Prediction Using Long Short Term Memory

  • Bhalke D
  • Bhingarde D
  • Deshmukh S
  • et al.
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Abstract

Stock market price prediction is difficult and complex task. Prediction in stock market is very complex and unstable Process. Stock Price are most of the time tend to follow patterns those are more or less regular in stock price curve. Machine Learning techniques use different predictive models and algorithms to predict and automate things to reduce human effort. This research paper focuses on the use of Long Short Term Memory (LSTM) to predict the future stock market company price of stock using each day closing price analysis. LSTM is very helpful in sequential data models. In this paper LSTM algorithm has been used to train and forecast the future stock prices.

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APA

Bhalke, D. G., Bhingarde, D., Deshmukh, S., & Dhere, D. (2022). Stock Price Prediction Using Long Short Term Memory. SAMRIDDHI : A Journal of Physical Sciences, Engineering and Technology, 14(Spl-2 issu), 271–273. https://doi.org/10.18090/samriddhi.v14spli02.12

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