Research Article

PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS

Volume: 1 Number: 1 December 30, 2016
EN

PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS

Abstract

respect a new approach is presented, which is a probabilistic sorting for effective elitism and ensuing improved and robust convergence. This is achieved by an adaptive probabilistic model representing the commensurate probability density of the random solutions throughout the generations that it yields a probabilistic distance measure which is nonlinear with respect to the range of solutions as to their location in the objectives space. The implementation of the theoretical results leads an effective evolutionary optimization algorithm accomplished in two stages. In the first stage linear non-dominated sorting, tournament selection and elitism is carried out in objective space. In the second stage, the same is executed in a transformed objective space, where probabilistic distance measure for ranking prevails. The effectiveness of the method is exemplified by a demonstrative computer experiment. The problem treated is selected from the existing literature for comparison, while the experiment carried out and reported here demonstrates the marked performance of the approach. The experiment complies with the theoretical foundations, so that the robust and fast convergence with precision as well as with accuracy is accomplished throughout the search up to 10-10 range or beyond, limited exclusively by machine precision.

Keywords

References

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Details

Primary Language

English

Subjects

Electrical Engineering

Journal Section

Research Article

Authors

Rituparna Datta This is me
South Korea

Publication Date

December 30, 2016

Submission Date

October 27, 2016

Acceptance Date

November 29, 2016

Published in Issue

Year 2016 Volume: 1 Number: 1

APA
Şeker, Ş. S., Bittermann, M. S., Çağlar, R., & Datta, R. (2016). PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS. The Journal of Cognitive Systems, 1(1), 19-27. https://izlik.org/JA42PH55NL
AMA
1.Şeker ŞS, Bittermann MS, Çağlar R, Datta R. PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS. JCS. 2016;1(1):19-27. https://izlik.org/JA42PH55NL
Chicago
Şeker, Şahin Serhat, Michael S. Bittermann, Ramazan Çağlar, and Rituparna Datta. 2016. “PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS”. The Journal of Cognitive Systems 1 (1): 19-27. https://izlik.org/JA42PH55NL.
EndNote
Şeker ŞS, Bittermann MS, Çağlar R, Datta R (December 1, 2016) PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS. The Journal of Cognitive Systems 1 1 19–27.
IEEE
[1]Ş. S. Şeker, M. S. Bittermann, R. Çağlar, and R. Datta, “PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS”, JCS, vol. 1, no. 1, pp. 19–27, Dec. 2016, [Online]. Available: https://izlik.org/JA42PH55NL
ISNAD
Şeker, Şahin Serhat - Bittermann, Michael S. - Çağlar, Ramazan - Datta, Rituparna. “PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS”. The Journal of Cognitive Systems 1/1 (December 1, 2016): 19-27. https://izlik.org/JA42PH55NL.
JAMA
1.Şeker ŞS, Bittermann MS, Çağlar R, Datta R. PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS. JCS. 2016;1:19–27.
MLA
Şeker, Şahin Serhat, et al. “PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS”. The Journal of Cognitive Systems, vol. 1, no. 1, Dec. 2016, pp. 19-27, https://izlik.org/JA42PH55NL.
Vancouver
1.Şahin Serhat Şeker, Michael S. Bittermann, Ramazan Çağlar, Rituparna Datta. PROBABILISTIC SORTING FOR EFFECTIVE ELITISM IN MULTI-OBJECTIVE EVOLUTIONARY ALGORITHMS. JCS [Internet]. 2016 Dec. 1;1(1):19-27. Available from: https://izlik.org/JA42PH55NL