Sparse Portfolio Selection via Non-convex Fraction Function
Angang Cui, Jigen Peng, Chengyi Zhang, Haiyang Li, Meng Wen

TL;DR
This paper introduces a novel non-convex fraction function for sparse portfolio selection, develops theoretical properties and algorithms, and demonstrates effective empirical performance in finding sparse portfolios with or without short-selling constraints.
Contribution
The paper proposes a new non-convex fraction function, analyzes its properties, and develops iterative thresholding algorithms for sparse portfolio selection.
Findings
Effective in selecting sparse portfolios
Handles constraints with and without short-selling
Provides theoretical guarantees for solutions
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 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 . Based on it, we prove the existence of the resolvent operator of gradient of , calculate its analytic expression, and propose an iterative fraction penalty thresholding (IFPT) algorithm to solve the problem . Moreover, we also prove that the value of the regularization parameter can not be chosen too large. Indeed, there exists…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Advanced Bandit Algorithms Research · Risk and Portfolio Optimization
