An Iterative Path-Breaking Approach with Mutation and Restart Strategies for the MAX-SAT Problem
August 10, 2018 Β· Declared Dead Β· π Computers & Operations Research
"No code URL or promise found in abstract"
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Authors
Zhen-Xing Xu, Kun He, Chu-Min Li
arXiv ID
1808.03611
Category
cs.AI: Artificial Intelligence
Citations
10
Venue
Computers & Operations Research
Last Checked
4 months ago
Abstract
Although Path-Relinking is an effective local search method for many combinatorial optimization problems, its application is not straightforward in solving the MAX-SAT, an optimization variant of the satisfiability problem (SAT) that has many real-world applications and has gained more and more attention in academy and industry. Indeed, it was not used in any recent competitive MAX-SAT algorithms in our knowledge. In this paper, we propose a new local search algorithm called IPBMR for the MAX-SAT, that remedies the drawbacks of the Path-Relinking method by using a careful combination of three components: a new strategy named Path-Breaking to avoid unpromising regions of the search space when generating trajectories between two elite solutions; a weak and a strong mutation strategies, together with restarts, to diversify the search; and stochastic path generating steps to avoid premature local optimum solutions. We then present experimental results to show that IPBMR outperforms two of the best state-of-the-art MAX-SAT solvers, and an empirical investigation to identify and explain the effect of the three components in IPBMR.
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