Publication: State-dependent stock selection in index tracking: a machine learning approach
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KU-Authors
KU Authors
Co-Authors
Bradrania, R.
Shafizadeh, M.
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Type
Embargo Status
Journal Title
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Alternative Title
Abstract
We focus on the stock selection step of the index tracking problem in passive investment management and incorporate constant changes in the dynamics of markets into the decision. We propose an approach, using machine learning techniques, which analyses the performance of the selection methods used in previous market states and identifies the one that gives the optimal tracking portfolio in each period. We apply the proposed procedure using the popular cointegration technique in index tracking and show that it tracks the S&P 500 with a very high level of accuracy. The empirical evidence shows that our proposed approach outperforms cointegration techniques that use a single criterion (e.g., stocks with the maximum market capitalization) in the asset selection.
Source
Publisher
Springer
Subject
Business, Finance, Industrial engineering
Citation
Has Part
Source
Financial Markets and Portfolio Management
Book Series Title
Edition
DOI
10.1007/s11408-021-00391-7