4.7 Article

Non-linear Activated Beetle Antennae Search: A novel technique for non-convex tax-aware portfolio optimization problem

期刊

EXPERT SYSTEMS WITH APPLICATIONS
卷 197, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2022.116631

关键词

Beetle Antennae Search; Portfolio selection; Tax-liability; Optimization; Finance problem

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This paper proposes a non-deterministic meta-heuristic algorithm called NABAS for solving the non-convex tax-aware portfolio optimization problem. By conducting simulation on stock data from 20 companies and comparing with other algorithms, it is shown that better-optimized portfolio can be achieved with a non-convex problem.
The non-convex tax-aware portfolio optimization problem is traditionally approximated as a convex problem, which compromises the quality of the solution and converges to a local-minima instead of global minima. In this paper, we proposed a non-deterministic meta-heuristic algorithm called Non-linear Activated Beetle Antennae Search (NABAS). NABAS explores the search space at the given gradient estimate measure until it is smaller than a threshold known as Activation Threshold, which increases its convergence rate and avoids local minima. To test the validity of NABAS, we formulated an optimization-based tax-aware portfolio problem. The objective is to maximize the profit and minimize the risk and tax liabilities and fulfill other constraints. We collected stock data of 20 companies from the NASDAQ stock market and performed a simulation using MATLAB. A comprehensive comparison is made with BAS, PSO, and GA algorithms. The results also showed that a better-optimized portfolio is achieved with a non-convex problem than a convex problem.

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