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Trap escape for local search by backtracking and conflict reverse
Conference paper

Trap escape for local search by backtracking and conflict reverse

Huu-Phuoc Duong, Thao Duong, Duc Nghia Pham, Abdul Sattar and Anh Duc Duong
Scandinavian Conference on Artificial Intelligence, 12 (Aalborg, Denmark, 20/11/2013–22/11/2013)
2013

Abstract

Computer Science Computer Science, Artificial Intelligence Computer Science, Theory & Methods Science & Technology Technology Satisfiability and optimisation
This paper presents an efficient trap escape strategy in stochastic local search for Satisfiability. The proposed method aims to enhance local search by providing an alternative local minima escaping strategy. Our variable selection scheme provides a novel local minima escaping mechanism to explore new solution areas. Conflict variables are hypothesized as variables recently selected near local minima. Hence, a list of backtracked conflict variables is retrieved from local minima. The new strategy selects variables in the backtracked variable list based on the clause-weight scoring function and stagnation weights and variable weights as tiebreak criteria. This method is an alternative to the conventional method of selecting variables in a randomized unsatisfied clause. The proposed tiebreak method favors high stagnation weights and low variable weights during trap escape phases. The new strategies are examined on verification benchmark and SAT Competition 2011 and 2012 application and crafted instances. Our experiments show that proposed strategy has comparable performance with state-of-the-art local search solvers for SAT.

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