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Issue title: Formal Models - Computability, Complexity, Applications
Article type: Research Article
Authors: Grozea, Cristian | Popescu, Marius
Affiliations: Fraunhofer FOKUS, Kaiserin Augusta Allee 31, 10589 Berlin, Germany. [email protected] | University of Bucharest, Academiei 14, Bucharest, Romania. [email protected]
Note: [] Address for correspondence: Fraunhofer FOKUS, Kaiserin Augusta Allee 31, 10589 Berlin, Germany
Abstract: This note describes our experiments aiming to empirically test the ability of machine learning models to act as decision oracles for NP problems. Focusing on satisfiability testing problems, we have generated random 3-SAT instances and found out that the correct branch prediction accuracy reached levels in excess of 99%. The branching in a simple backtracking-based SAT solver has been reduced in more than 90% of the tested cases, and the average number of branching steps has reduced to between 1/5 and 1/3 of the one without the machine learning model. The percentage of SAT instances where the machine learned heuristic-enhanced algorithm solved SAT in a single pass reached levels of 80-90%, depending on the set of features used.
Keywords: ML, machine learning, satisfiability, SAT, NP, heuristics
DOI: 10.3233/FI-2014-1024
Journal: Fundamenta Informaticae, vol. 131, no. 3-4, pp. 441-450, 2014
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