Recurrent convolutional neural kernel model for stock price movement prediction.

Stock price movement prediction plays important roles in decision making for investors. It was usually regarded as a binary classification task. In this paper, a recurrent convolutional neural kernel (RCNK) model was proposed, which learned complementary features from different sources of data, name...

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Main Authors: Suhui Liu, Xiaodong Zhang, Ying Wang, Guoming Feng
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0234206
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spelling doaj-c2455b71bfb1439692afc699592b30542021-03-03T21:50:54ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-01156e023420610.1371/journal.pone.0234206Recurrent convolutional neural kernel model for stock price movement prediction.Suhui LiuXiaodong ZhangYing WangGuoming FengStock price movement prediction plays important roles in decision making for investors. It was usually regarded as a binary classification task. In this paper, a recurrent convolutional neural kernel (RCNK) model was proposed, which learned complementary features from different sources of data, namely, historical price data and text data in the message board, to predict the stock price movement. It integrated the advantage of technical analysis and sentiment analysis. Different from previous studies, the text data was treated as sequential data and utilized the RCNK model to train sentiment embeddings with the temporal features. Besides, in the classification section of the model, the explicit kernel mapping layer was used to replace several full-connected layers. This operation reduced the parameters of the model and the risk of overfitting. In order to test the impact of treating the sentiment data as sequential data, the effectiveness of explicit kernel mapping layer and the usefulness integrating the technical analysis and sentiment analysis, the proposed model was compared with the other two deep learning models (recurrent convolutional neural network model and convolutional neural kernel model) and the models with only one source of data as input. The result showed that the proposed model outperformed the other models.https://doi.org/10.1371/journal.pone.0234206
collection DOAJ
language English
format Article
sources DOAJ
author Suhui Liu
Xiaodong Zhang
Ying Wang
Guoming Feng
spellingShingle Suhui Liu
Xiaodong Zhang
Ying Wang
Guoming Feng
Recurrent convolutional neural kernel model for stock price movement prediction.
PLoS ONE
author_facet Suhui Liu
Xiaodong Zhang
Ying Wang
Guoming Feng
author_sort Suhui Liu
title Recurrent convolutional neural kernel model for stock price movement prediction.
title_short Recurrent convolutional neural kernel model for stock price movement prediction.
title_full Recurrent convolutional neural kernel model for stock price movement prediction.
title_fullStr Recurrent convolutional neural kernel model for stock price movement prediction.
title_full_unstemmed Recurrent convolutional neural kernel model for stock price movement prediction.
title_sort recurrent convolutional neural kernel model for stock price movement prediction.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description Stock price movement prediction plays important roles in decision making for investors. It was usually regarded as a binary classification task. In this paper, a recurrent convolutional neural kernel (RCNK) model was proposed, which learned complementary features from different sources of data, namely, historical price data and text data in the message board, to predict the stock price movement. It integrated the advantage of technical analysis and sentiment analysis. Different from previous studies, the text data was treated as sequential data and utilized the RCNK model to train sentiment embeddings with the temporal features. Besides, in the classification section of the model, the explicit kernel mapping layer was used to replace several full-connected layers. This operation reduced the parameters of the model and the risk of overfitting. In order to test the impact of treating the sentiment data as sequential data, the effectiveness of explicit kernel mapping layer and the usefulness integrating the technical analysis and sentiment analysis, the proposed model was compared with the other two deep learning models (recurrent convolutional neural network model and convolutional neural kernel model) and the models with only one source of data as input. The result showed that the proposed model outperformed the other models.
url https://doi.org/10.1371/journal.pone.0234206
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AT xiaodongzhang recurrentconvolutionalneuralkernelmodelforstockpricemovementprediction
AT yingwang recurrentconvolutionalneuralkernelmodelforstockpricemovementprediction
AT guomingfeng recurrentconvolutionalneuralkernelmodelforstockpricemovementprediction
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