RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting Prevention

An accurate prediction of stock market index is important for investors to reduce financial risk. Although quite a number of deep learning methods have been developed for the stock prediction, some fundamental problems, such as weak generalization ability and overfitting in training, need to be solv...

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Main Authors: Hongying Zheng, Zhiqiang Zhou, Jianyong Chen
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2021/8865816
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spelling doaj-47394faa1e4341f0b902644d2a86d92c2021-05-31T00:34:07ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52732021-01-01202110.1155/2021/8865816RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting PreventionHongying Zheng0Zhiqiang Zhou1Jianyong Chen2School of Software EngineeringGuangdong Laboratory of Artificial Intelligence and Digital Economy (SZ)Guangdong Laboratory of Artificial Intelligence and Digital Economy (SZ)An accurate prediction of stock market index is important for investors to reduce financial risk. Although quite a number of deep learning methods have been developed for the stock prediction, some fundamental problems, such as weak generalization ability and overfitting in training, need to be solved. In this paper, a new deep learning model named Random Long Short-Term Memory (RLSTM) is proposed to get a better predicting result. RLSTM includes prediction module, prevention module, and three full connection layers. Input of the prediction module is a stock or an index which needs to be predicted. That of the prevention module is a random number series. With the index of Shanghai Securities Composite Index (SSEC) and Standard & Poor’s 500 (S&P500), simulations show that the proposed RLSTM can mitigate the overfitting and outperform others in accuracy of prediction.http://dx.doi.org/10.1155/2021/8865816
collection DOAJ
language English
format Article
sources DOAJ
author Hongying Zheng
Zhiqiang Zhou
Jianyong Chen
spellingShingle Hongying Zheng
Zhiqiang Zhou
Jianyong Chen
RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting Prevention
Computational Intelligence and Neuroscience
author_facet Hongying Zheng
Zhiqiang Zhou
Jianyong Chen
author_sort Hongying Zheng
title RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting Prevention
title_short RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting Prevention
title_full RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting Prevention
title_fullStr RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting Prevention
title_full_unstemmed RLSTM: A New Framework of Stock Prediction by Using Random Noise for Overfitting Prevention
title_sort rlstm: a new framework of stock prediction by using random noise for overfitting prevention
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5273
publishDate 2021-01-01
description An accurate prediction of stock market index is important for investors to reduce financial risk. Although quite a number of deep learning methods have been developed for the stock prediction, some fundamental problems, such as weak generalization ability and overfitting in training, need to be solved. In this paper, a new deep learning model named Random Long Short-Term Memory (RLSTM) is proposed to get a better predicting result. RLSTM includes prediction module, prevention module, and three full connection layers. Input of the prediction module is a stock or an index which needs to be predicted. That of the prevention module is a random number series. With the index of Shanghai Securities Composite Index (SSEC) and Standard & Poor’s 500 (S&P500), simulations show that the proposed RLSTM can mitigate the overfitting and outperform others in accuracy of prediction.
url http://dx.doi.org/10.1155/2021/8865816
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AT zhiqiangzhou rlstmanewframeworkofstockpredictionbyusingrandomnoiseforoverfittingprevention
AT jianyongchen rlstmanewframeworkofstockpredictionbyusingrandomnoiseforoverfittingprevention
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