2006
DOI: 10.1162/evco.2006.14.2.223
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GASAT: A Genetic Local Search Algorithm for the Satisfiability Problem

Abstract: This paper presents GASAT, a hybrid algorithm for the satisfiability problem (SAT). The main feature of GASAT is that it includes a recombination stage based on a specific crossover and a tabu search stage. We have conducted experiments to evaluate the different components of GASAT and to compare its overall performance with state-of-the-art SAT algorithms. These experiments show that GASAT provides very competitive results.

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Cited by 67 publications
(52 citation statements)
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“…First, the compass approach addresses the evaluation of both the fitness and the diversity while DBR only considers the diversity, being focused on the evaluation of crossover operators exclusively. Secondly, compass makes use of the Hamming distance entropy as in Lardeux et al (2006) to measure the population diversity, while DBR deals with both the average pairwise distance of the offspring as well as the distance from the parent population using the CARP based diversity measure shown in Fig. 1. …”
Section: Diversity-based Reward (Dbr)mentioning
confidence: 99%
“…First, the compass approach addresses the evaluation of both the fitness and the diversity while DBR only considers the diversity, being focused on the evaluation of crossover operators exclusively. Secondly, compass makes use of the Hamming distance entropy as in Lardeux et al (2006) to measure the population diversity, while DBR deals with both the average pairwise distance of the offspring as well as the distance from the parent population using the CARP based diversity measure shown in Fig. 1. …”
Section: Diversity-based Reward (Dbr)mentioning
confidence: 99%
“…This kind of hybridization is called memetic algorithms [31]. Recently, several memetic algorithms were proposed to deal with the Max Sat problems for example: FlipGA [9] based on hybrid genetic algorithm and a special flip heuristics; GASAT [8] based on hybrid genetic algorithm and tabu search and QGASAT [32] based on quantum evolutionary algorithm and an adapted quantum local search procedure. Finally, a new kind of hybridization based on incomplete and complete algorithms has emerged.…”
Section: State-of-the-art Sat Solving Algorithmsmentioning
confidence: 99%
“…For example the figure 6 shows an example of quantum crossover. It should be noted that is better to use specific crossover operations more adapted for the max sat problems like those used in GASAT [8]. View that the quantum representation offers a great diversity; it is preferably to use small values for the probabilities of mutation and crossover in order to keep good performance of GQA.…”
Section: Crossover Operatorsmentioning
confidence: 99%
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“…Finally, Lardeux at al. [14] propose the GASAT algorithm, based on evolutionary algorithms and tabu search for SAT. The GASAT algorithm consists of a recombination stage based on a specific crossover and a tabu search stage.…”
Section: Related Workmentioning
confidence: 99%