GraphCNNpred: A stock market indices prediction using a Graph based deep learning system
- URL: http://arxiv.org/abs/2407.03760v2
- Date: Wed, 17 Jul 2024 11:07:28 GMT
- Title: GraphCNNpred: A stock market indices prediction using a Graph based deep learning system
- Authors: Yuhui Jin,
- Abstract summary: We give a graph neural network based convolutional neural network (CNN) model, that can be applied on diverse source of data, in the attempt to extract features to predict the trends of indices of textS&textP 500, NASDAQ, DJI, NYSE, and RUSSEL.
Experiments show that the associated models improve the performance of prediction in all indices over the baseline algorithms by about $4% text to 15%$, in terms of F-measure.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The application of deep learning techniques for predicting stock market prices is a prominent and widely researched topic in the field of data science. To effectively predict market trends, it is essential to utilize a diversified dataset. In this paper, we give a graph neural network based convolutional neural network (CNN) model, that can be applied on diverse source of data, in the attempt to extract features to predict the trends of indices of \text{S}\&\text{P} 500, NASDAQ, DJI, NYSE, and RUSSEL. The experiments show that the associated models improve the performance of prediction in all indices over the baseline algorithms by about $4\% \text{ to } 15\%$, in terms of F-measure. A trading simulation is generated from predictions and gained a Sharpe ratio of over 3.
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