Design and Analysis of Robust Deep Learning Models for Stock Price
Prediction
- URL: http://arxiv.org/abs/2106.09664v1
- Date: Thu, 17 Jun 2021 17:15:02 GMT
- Title: Design and Analysis of Robust Deep Learning Models for Stock Price
Prediction
- Authors: Jaydip Sen and Sidra Mehtab
- Abstract summary: Building predictive models for robust and accurate prediction of stock prices and stock price movement is a challenging research problem to solve.
This chapter proposes a collection of predictive regression models built on deep learning architecture for robust and precise prediction of the future prices of a stock listed in the diversified sectors in the National Stock Exchange (NSE) of India.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Building predictive models for robust and accurate prediction of stock prices
and stock price movement is a challenging research problem to solve. The
well-known efficient market hypothesis believes in the impossibility of
accurate prediction of future stock prices in an efficient stock market as the
stock prices are assumed to be purely stochastic. However, numerous works
proposed by researchers have demonstrated that it is possible to predict future
stock prices with a high level of precision using sophisticated algorithms,
model architectures, and the selection of appropriate variables in the models.
This chapter proposes a collection of predictive regression models built on
deep learning architecture for robust and precise prediction of the future
prices of a stock listed in the diversified sectors in the National Stock
Exchange (NSE) of India. The Metastock tool is used to download the historical
stock prices over a period of two years (2013- 2014) at 5 minutes intervals.
While the records for the first year are used to train the models, the testing
is carried out using the remaining records. The design approaches of all the
models and their performance results are presented in detail. The models are
also compared based on their execution time and accuracy of prediction.
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