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Solving the multi-stage portfolio optimization problem with a novel particle swarm optimization
Authors:Jun Sun  Wei Fang  Xiaojun Wu  Choi-Hong Lai  Wenbo Xu
Affiliation:1. Laboratory of Industrial Systems Optimization (LOSI), Charles Delaunay Institute (ICD), University of Technology of Troyes (UTT), ICD-LOSI, 12 rue Marie Curie—CS 42060, 10004 Troyes, France;2. Agricultural Cooperative Society in the Region of Arcis-sur-Aube (SCARA), Industrial Zone of Villette 10700, Villette-sur-Aube, France;1. School of Business Administration, South China University of Technology, Guangzhou, 510641, PR China;2. School of Economics & Management, Changzhou University, Changzhou, 213164, PR China;1. Bucharest University of Economic Studies, Department of Applied Mathematics, Piata Romana 6, Bucharest 010374, Romania;2. Gheorghe Mihoc-Caius Iacob Institute of Mathematical Statistics and Applied Mathematics of Romanian Academy, Calea 13 Septembrie No.13, Sector 5, Bucharest 050711, Romania
Abstract:Solving the multi-stage portfolio optimization (MSPO) problem is very challenging due to nonlinearity of the problem and its high consumption of computational time. Many heuristic methods have been employed to tackle the problem. In this paper, we propose a novel variant of particle swarm optimization (PSO), called drift particle swarm optimization (DPSO), and apply it to the MSPO problem solving. The classical return-variance function is employed as the objective function, and experiments on the problems with different numbers of stages are conducted by using sample data from various stocks in S&P 100 index. We compare performance and effectiveness of DPSO, particle swarm optimization (PSO), genetic algorithm (GA) and two classical optimization solvers (LOQO and CPLEX), in terms of efficient frontiers, fitness values, convergence rates and computational time consumption. The experiment results show that DPSO is more efficient and effective in MSPO problem solving than other tested optimization tools.
Keywords:
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