Two robust long short-term memory frameworks for trading stocks

作者:Dušan Fister, Matjaž Perc, Timotej Jagrič

摘要

This paper aims to find a superior strategy for the daily trading on a portfolio of stocks for which traditional trading strategies perform poorly due to the low frequency of new information. The experimental work is divided into a set of traditional trading strategies and a set of long short-term memory networks. The networks incorporate general and specific trading patterns, where the former takes into account the universal decision factors for trading across many stocks, while the latter takes into account stock-specific decision factors. Our research shows that both long short-term memory networks, regardless of whether they are based on universal or stock-specific decision factors, significantly outperform traditional trading strategies. Interestingly, however, on average neither has the edge compared to the other, thus remaining ambivalent as to whether universality or specificality is to be preferred when it comes to designing long short-term memory networks for optimal trading.

论文关键词:Long short-term memory, Algorithmic trading, Mechanical trading system, Portfolio of stocks

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论文官网地址:https://doi.org/10.1007/s10489-021-02249-x