Facebook Instagram Twitter RSS Feed PodBean Back to top on side

Multiobjective Algorithms with Resampling for Portfolio Optimization

In: Computing and Informatics, vol. 32, no. 4
S. Garcia - D. Quintana - I.m. Galván - P. Isasi

Details:

Year, pages: 2013, 777 - 796
Keywords:
Financial portfolio optimization, robust portfolio, multiobjective evolutionary algorithms
About article:
Constrained financial portfolio optimization is a challenging domain where the use of multiobjective evolutionary algorithms has been thriving over the last few years. One of the major issues related to this problem is the dependence of the results on a set of parameters. Given the nature of financial prediction, these figures are often inaccurate, which results in unreliable estimates for the efficient frontier. In this paper we introduce a resampling mechanism that deals with uncertainty in the parameters and results in efficient frontiers that are more robust. We test this idea on real data using four multiobjective optimization algorithms (NSGA-II, GDE3, SMPSO and SPEA2). The results show that resampling significantly increases the reliability of the resulting portfolios.
How to cite:
ISO 690:
Garcia, S., Quintana, D., Galván, I., Isasi, P. 2013. Multiobjective Algorithms with Resampling for Portfolio Optimization. In Computing and Informatics, vol. 32, no.4, pp. 777-796. 1335-9150.

APA:
Garcia, S., Quintana, D., Galván, I., Isasi, P. (2013). Multiobjective Algorithms with Resampling for Portfolio Optimization. Computing and Informatics, 32(4), 777-796. 1335-9150.