Hybrid Approaches and Dimensionality Reduction for Portfolio Selection with Cardinality Constraints

IEEE Computational Intelligence Magazine(2010)

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摘要
A novel memetic algorithm that combines evolutionary algorithms, quadratic programming, and specially devised pruning heuristics is proposed for the selection of cardinality-constrained optimal portfolios. The framework used is the standard Markowitz mean-variance formulation for portfolio optimization with constraints of practical interest, such as minimum and maximum investments per asset and/or on groups of assets. Imposing limits on the number of different assets that can be included in the investment transforms portfolio selection into an NP-complete mixed-integer quadratic optimization problem that is difficult to solve by standard methods. An implementation of the algorithm that employs a genetic algorithm with a set representation, an appropriately defined mutation operator and Random Assortment Recombination for crossover (RAR-GA) is compared with implementations using Simulated Annealing (SA) and various Estimation of Distribution Algorithms (EDAs). An empirical investigation of the performance of the portfolios selected with these different methods using financial data shows that RAR-GA and SA are superior to the implementations with EDAs in terms of both accuracy and efficiency. The use of pruning heuristics that effectively reduce the dimensionality of the problem by identifying and eliminating from the universe of investment assets that are not expected to appear in the optimal portfolio leads to significant improvements in performance and makes EDAs competitive with RAR-GA and SA.
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cardinalityconstrained optimal portfolio,evolutionary algorithm,quadratic programming,financial data,portfolio selection,hybrid approach,cardinality constrained optimal portfolio selection,dimensionality reduction,np-complete mixed integer quadratic optimization problem,novel memetic algorithm,cardinality constraints,evolutionary algorithms,optimal portfolio,pruning heuristics,simulated annealing,different asset,finance,random assortment recombination,genetic algorithm,different method,genetic algorithms,memetic algorithm,cardinality constraint,markowitz mean-variance for⬠mulation,hybrid approaches,portfolio optimization,mutation operator,estimation of distribution algorithms,estimation of distribution algorithm,quadratic optimization,upper bound,memetics,constraint optimization,investments,constrained optimization,quadratic program,evolutionary computation
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