Building multi-factor stock selection models using balanced split regression trees with sorting normalisation and hybrid variables

Q3 Business, Management and Accounting International Journal of Foresight and Innovation Policy Pub Date : 2015-06-30 DOI:10.1504/ijfip.2015.070081
I. Yeh, Che-hui Lien, Tao-Ming Ting
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引用次数: 1

Abstract

This research employed regression trees to build the predictive models of the rate of return of the portfolio and conducted an empirical study in the Taiwan stock market. Our study employed the sorting normalisation approach to normalise independent and dependent variables and used balanced split regression trees to improve the defects of the traditional regression trees. The results show (a) using the sorting normalised independent and dependent variables can build a predictive model with a better capability in predicting the rate of return of the portfolio, (b) the balanced split regression trees perform well except in the training period from 1999 to 2000. One possible reason is that the dot-com bubble achieved its peak in 2000 which changes investors' behaviour, (c) during the training period, the predictive ability of the model using data from the bull market outperforms the model using data from the bear market.
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利用具有分类归一化和混合变量的平衡分裂回归树建立多因素选股模型
本研究采用回归树建立投资组合收益率预测模型,并以台湾股市为实证研究对象。我们的研究采用排序归一化方法对自变量和因变量进行归一化,并使用平衡分裂回归树来改进传统回归树的缺陷。结果表明:(a)使用排序归一化的自变量和因变量可以建立一个预测组合收益率的预测模型,(b)平衡分裂回归树除了在1999年至2000年的训练期内表现良好。一个可能的原因是,互联网泡沫在2000年达到顶峰,这改变了投资者的行为,(c)在训练期间,使用牛市数据的模型的预测能力优于使用熊市数据的模型。
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来源期刊
International Journal of Foresight and Innovation Policy
International Journal of Foresight and Innovation Policy Business, Management and Accounting-Management of Technology and Innovation
CiteScore
2.10
自引率
0.00%
发文量
2
期刊介绍: The IJFIP has been established as a peer reviewed, international authoritative reference in the field. It publishes high calibre academic articles dealing with knowledge creation, diffusion and utilisation in innovation policy. The journal thus covers all types of Strategic Intelligence (SI). SI is defined as the set of actions that search, process, diffuse and protect information in order to make it available to the right person at the right time in order to make the right decision. Examples of SI in the domain of innovation include Foresight, Forecasting, Delphi studies, Technology Assessment, Benchmarking, R&D evaluation and Technology Roadmapping.
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