Treffer: Preventing Premature Convergence and Proving the Optimality in Evolutionary Algorithms

Title:
Preventing Premature Convergence and Proving the Optimality in Evolutionary Algorithms
Contributors:
Centre National de la Recherche Scientifique - CNRS (FRANCE), Ecole Nationale de l'Aviation Civile - ENAC (FRANCE), Institut National Polytechnique de Toulouse - Toulouse INP (FRANCE), Université Toulouse III - Paul Sabatier - UT3 (FRANCE), Université Toulouse - Jean Jaurès - UT2J (FRANCE), Université Toulouse 1 Capitole - UT1 (FRANCE), Institut de Recherche en Informatique de Toulouse - IRIT (Toulouse, France)
Publisher Information:
INRIA
Publication Year:
2013
Collection:
OATAO (Open Archive Toulouse Archive Ouverte - Université de Toulouse)
Document Type:
Konferenz conference object
File Description:
application/pdf
Language:
English
Relation:
https://oatao.univ-toulouse.fr/12808/1/vanaret_12808.pdf; Vanaret, Charlie and Gotteland, Jean-Baptiste and Durand, Nicolas and Alliot, Jean-Marc. Preventing Premature Convergence and Proving the Optimality in Evolutionary Algorithms. (2013) In: 11th International Conference Evolution Artificielle (EA 2013), 21 October 2013 - 23 October 2013 (Bordeaux, France).
DOI:
10.1007/978-3-319-11683-9_3
Rights:
info:eu-repo/semantics/openAccess
Accession Number:
edsbas.3C95488B
Database:
BASE

Weitere Informationen

Evolutionary Algorithms (EA) usually carry out an efficient exploration of the search-space, but get often trapped in local minima and do not prove the optimality of the solution. Interval-based techniques, on the other hand, yield a numerical proof of optimality of the solution. However, they may fail to converge within a reasonable time due to their inability to quickly compute a good approximation of the global minimum and their exponential complexity. The contribution of this paper is a hybrid algorithm called Charibde in which a particular EA, Differential Evolution, cooperates with a Branch and Bound algorithm endowed with interval propagation techniques. It prevents premature convergence toward local optima and outperforms both deterministic and stochastic existing approaches. We demonstrate its efficiency on a benchmark of highly multimodal problems, for which we provide previously unknown global minima and certification of optimality.