Identification of nonlinear determinants of stock indices derived by Random Forest algorithm

Grzegorz Tratkowski
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Abstract

Abstract In this paper, the use of the machine learning algorithm is examined in derivation of the determinants of price movements of stock indices. The Random Forest algorithm was selected as an ideal representative of the nonlinear algorithms based on decision trees. Various brokering and investment firms and individual investors need comprehensive and insight information such as the drivers of stock price movements and relationships existing between the various factors of the stock market so that they can invest efficiently through better understanding. Our work focuses on determining the factors that drive the future price movements of Stoxx Europe 600, DAX, and WIG20 by using the importance of input variables in the Random Forest classifier. The main determinants were derived from a large dataset containing macroeconomic and market data, which were collected everyday through various ways.
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基于随机森林算法的股票指数非线性决定因素辨识
摘要本文探讨了机器学习算法在股票指数价格变动决定因素推导中的应用。选择随机森林算法作为基于决策树的非线性算法的理想代表。各种经纪和投资公司以及个人投资者需要全面和深入的信息,如股票价格变动的驱动因素和股票市场各种因素之间存在的关系,以便更好地了解他们的投资效率。我们的工作重点是通过使用随机森林分类器中输入变量的重要性来确定驱动斯托克欧洲600指数、DAX指数和WIG20指数未来价格变动的因素。主要决定因素来自包含宏观经济和市场数据的大型数据集,这些数据每天通过各种方式收集。
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13
审稿时长
25 weeks
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