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Title: Sparse minimax portfolio and sharpe ratio models
Authors: Zu, C 
Yang, X 
Yu, CKW
Issue Date: Sep-2022
Source: Journal of Industrial and Management Optimization, Sept. 2022, v. 18, no. 5, p. 3247-3262
Abstract: In this paper, we investigate sparse portfolio selection models with a regularized lp-norm term (0 < p ≤ 1) and negatively bounded shorting constraints. We obtain some basic properties of several linear lp-sparse minimax portfolio models in terms of the regularization parameter. In particular, we introduce an l1-sparse minimax Sharpe ratio model by guaranteeing a positive denominator with a pre-selected parameter and design a parametric algorithm for finding its global solution. We carry out numerical experiments of linear lp-sparse minimax portfolio models with 1200 stocks from Hang Seng Index, Shanghai Securities Composite Index, and NASDAQ Index and compare their performance with lp-sparse mean-variance models. We test the effect of the regularization parameter and the negatively bounded shorting parameter on the level of sparsity, risk, and rate of return respectively and find that portfolios including fewer stocks of the linear lp-sparse minimax models tend to have lower risks and lower rates of return. However, for the lp-sparse mean-variance models, the corresponding changes are not so significant.
Keywords: Lp regularization
Sharpe ratio
Short selling
Sparse mean-variance model
Sparse minimax portfolio selection model
Publisher: American Institute of Mathematical Sciences
Journal: Journal of industrial and management optimization 
ISSN: 1547-5816
EISSN: 1553-166X
DOI: 10.3934/jimo.2021111
Rights: JIMO is published by the American Institute of Mathematical Sciences and sponsored by Curtin University, Zhejiang University, and Chongqing Normal University. All rights reserved.
This article has been published in a revised form in Journal of Industrial and Management Optimization http://dx.doi.org/10.3934/jimo.2021111. This version is free to download for private research and study only. Not for redistribution, resale or use in derivative works.
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