Sparse Portfolio Selection via Quasi-Norm Regularization
Abstract
In this paper, we propose -norm regularized models to seek near-optimal sparse portfolios. These sparse solutions reduce the complexity of portfolio implementation and management. Theoretical results are established to guarantee the sparsity of the second-order KKT points of the -norm regularized models. More interestingly, we present a theory that relates sparsity of the KKT points with Projected correlation and Projected Sharpe ratio. We also design an interior point algorithm to obtain an approximate second-order KKT solution of the -norm models in polynomial time with a fixed error tolerance, and then test our -norm modes on S&P 500 (2008-2012) data and international market data.\ The computational results illustrate that the -norm regularized models can generate portfolios of any desired sparsity with portfolio variance and portfolio return comparable to those of the unregularized Markowitz model with cardinality constraint. Our analysis of a combined model lead us to conclude that sparsity is not directly related to overfitting at all. Instead, we find that sparsity moderates overfitting only indirectly. A combined - model shows that the proper choose of leverage, which is the amount of additional buying-power generated by selling short can mitigate overfitting; A combined - model is able to produce extremely high performing portfolios that exceeded the 1/N strategy and all and regularized portfolios.
Keywords
Cite
@article{arxiv.1312.6350,
title = {Sparse Portfolio Selection via Quasi-Norm Regularization},
author = {Caihua Chen and Xindan Li and Caleb Tolman and Suyang Wang and Yinyu Ye},
journal= {arXiv preprint arXiv:1312.6350},
year = {2013}
}
Comments
34 pages,7 figures