Integrated Long-Term Stock Selection Models Based on Feature Selection and Machine Learning Algorithms for China Stock Market | IEEE Journals & Magazine | IEEE Xplore

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Integrated Long-Term Stock Selection Models Based on Feature Selection and Machine Learning Algorithms for China Stock Market


Experimental data, design, flowchart and results based on various integrated long-term stock selection models in A-share market.

Abstract:

The classical linear multi-factor stock selection model is widely used for long-term stock price trend prediction. However, the stock market is chaotic, complex, and dyna...Show More

Abstract:

The classical linear multi-factor stock selection model is widely used for long-term stock price trend prediction. However, the stock market is chaotic, complex, and dynamic, for which reasons the linear model assumption may be unreasonable, and it is more meaningful to construct a better-integrated stock selection model based on different feature selection and nonlinear stock price trend prediction methods. In this paper, the features are selected by various feature selection algorithms, and the parameters of the machine learning-based stock price trend prediction models are set through time-sliding window cross-validation based on 8-year data of Chinese A-share market. Through the analysis of different integrated models, the model performs best when the random forest algorithm is used for both feature selection and stock price trend prediction. Based on the random forest algorithm, a long-short portfolio is constructed to validate the effectiveness of the best model.
Experimental data, design, flowchart and results based on various integrated long-term stock selection models in A-share market.
Published in: IEEE Access ( Volume: 8)
Page(s): 22672 - 22685
Date of Publication: 24 January 2020
Electronic ISSN: 2169-3536

Funding Agency:


References

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