利用关联分类器的可解释性来支持定量股票交易

Giuseppe Attanasio, Luca Cagliero, Elena Baralis
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引用次数: 2

摘要

由于存在各种相互关联的经济和政治因素,预测股票市场尤其具有挑战性。近年来,机器学习算法在定量股票交易系统中的应用已经建立起来,因为它使数据驱动的方法能够在金融市场上进行投资。然而,大多数专业交易者仍然在寻找自动生成信号的解释,以验证他们是否遵守技术和基本规则。本文提出了一种可解释的股票交易方法。它研究了分类规则的使用,分类规则代表了一组离散指标值和目标类别之间的可靠关联,以解决第二天的股票价格预测。在短期股票交易中采用关联分类器不仅可以提供可靠的信号,而且可以让领域专家了解信号产生背后的原理。依赖于懒惰修剪策略的最先进的关联分类器的回测显示,在股票升值和交易系统对市场下跌的鲁棒性方面表现出有希望的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging the explainability of associative classifiers to support quantitative stock trading
Forecasting the stock market is particularly challenging due to the presence of a variety of inter-related economic and political factors. In recent years, the application of Machine Learning algorithms in quantitative stock trading systems has become established, as it enables a data-driven approach to investing in the financial markets. However, most professional traders still look for an explanation of automatically generated signals to verify their adherence to technical and fundamental rules. This paper presents an explainable approach to stock trading. It investigates the use of classification rules, which represent reliable associations between a set of discrete indicator values and the target class, to address next-day stock price prediction. Adopting associative classifiers in short-term stock trading not only provides reliable signals but also allows domain experts to understand the rationale behind signal generation. The backtesting of a state-of-the-art associative classifier, relying on a lazy pruning strategy, has shown promising performance in terms of equity appreciation and robustness of the trading system to market drawdowns.
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