Financial Forecasting with Machine Learning: Price Vs Return

Firuz Kamalov, Ikhlaas Gurrib, Khairan D. Rajab
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引用次数: 15

Abstract

Forecasting directional movement of stock price using machine learning tools has attracted a considerable amount of research. Two of the most common input features in a directional forecasting model are stock price and return. The choice between the former and the latter variables is often subjective. In this study, we compare the effectiveness of stock price and return as input features in directional forecasting models. We perform an extensive comparison of the two input features using 10-year historical data of ten large cap US companies. We employ four popular classification algorithms as the basis of the forecasting models used in our study. The results show that stock price is a more effective standalone input feature than return. The effectiveness of stock price and return equalize when we add technical indicators to the input feature set. We conclude that price is generally a more potent input feature than return value in predicting the direction of price movement. Our results should aid researchers and practitioners interested in applying machine learning models to stock price forecasting.
用机器学习进行财务预测:价格Vs回报
利用机器学习工具预测股票价格的定向运动已经吸引了大量的研究。方向性预测模型中最常见的两个输入特征是股票价格和收益。在前一个变量和后一个变量之间的选择通常是主观的。在本研究中,我们比较了股票价格和收益作为定向预测模型输入特征的有效性。我们使用10个美国大型公司的10年历史数据对这两个输入特征进行了广泛的比较。我们采用了四种流行的分类算法作为我们研究中使用的预测模型的基础。结果表明,股票价格是比收益更有效的独立输入特征。当我们在输入特征集中加入技术指标时,股票价格和收益的有效性相等。我们的结论是,在预测价格运动的方向时,价格通常是比回报价值更有效的输入特征。我们的研究结果应该有助于有兴趣将机器学习模型应用于股票价格预测的研究人员和实践者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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