English

Sparse Portfolio Selection via Non-convex Fraction Function

Optimization and Control 2018-01-30 v1

Abstract

In this paper, a continuous and non-convex promoting sparsity fraction function is studied in two sparse portfolio selection models with and without short-selling constraints. Firstly, we study the properties of the optimal solution to the problem (FPa,λ,η)(FP_{a,\lambda,\eta}) including the first-order and the second optimality condition and the lower and upper bound of the absolute value for its nonzero entries. Secondly, we develop the thresholding representation theory of the problem (FPa,λ,η)(FP_{a,\lambda,\eta}). Based on it, we prove the existence of the resolvent operator of gradient of Pa(x)P_{a}(x), calculate its analytic expression, and propose an iterative fraction penalty thresholding (IFPT) algorithm to solve the problem (FPa,λ,η)(FP_{a,\lambda,\eta}). Moreover, we also prove that the value of the regularization parameter λ>0\lambda>0 can not be chosen too large. Indeed, there exists λˉ>0\bar{\lambda}>0 such that the optimal solution to the problem (FPa,λ,η)(FP_{a,\lambda,\eta}) is equal to zero for any λ>λˉ\lambda>\bar{\lambda}. At last, inspired by the thresholding representation theory of the problem (FPa,λ,η)(FP_{a,\lambda,\eta}), we propose an iterative nonnegative fraction penalty thresholding (INFPT) algorithm to solve the problem (FPa,λ,η)(FP_{a,\lambda,\eta}^{\geq}). Empirical results show that our methods, for some proper a>0a>0, perform effective in finding the sparse portfolio weights with and without short-selling constraints.

Keywords

Cite

@article{arxiv.1801.09171,
  title  = {Sparse Portfolio Selection via Non-convex Fraction Function},
  author = {Angang Cui and Jigen Peng and Chengyi Zhang and Haiyang Li and Meng Wen},
  journal= {arXiv preprint arXiv:1801.09171},
  year   = {2018}
}
R2 v1 2026-06-22T23:59:36.366Z