Quantitative Stock Selection Model Based on Long-Short Term Memory (LSTM) Neural Network
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Keywords

Multi-factor
Validity test
Stock selection model
Quantitative strategy

DOI

10.26689/pbes.v4i3.2183

Submitted : 2021-05-31
Accepted : 2021-06-15
Published : 2021-06-30

Abstract

This article attempted to construct a multi-factor quantitative stock selection model, analyze the financial indicators and transaction data of listed companies in detail via the big data statistical test method, and to find out the alpha excess return relative to the market in the case of short stock index futures as a hedge in the Chinese market.

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