Phase Transition and Network Structure in Realistic SAT Problems
Soumya C. Kambhampati, Thomas Liu

TL;DR
This paper investigates how the phase transition in SAT problem hardness varies under realistic distributions and links these changes to network properties of the problem instances, revealing earlier transitions and structural insights.
Contribution
It introduces a study of SAT phase transitions under realistic distributions and connects these phenomena to network properties like centrality and small-worldness.
Findings
Realistic SAT distributions show earlier phase transitions.
Network properties explain the shift in hardness transition.
Empirical evidence links structural network features to problem difficulty.
Abstract
A fundamental question in Computer Science is understanding when a specific class of problems go from being computationally easy to hard. Because of its generality and applications, the problem of Boolean Satisfiability (aka SAT) is often used as a vehicle for investigating this question. A signal result from these studies is that the hardness of SAT problems exhibits a dramatic easy-to-hard phase transition with respect to the problem constrainedness. Past studies have however focused mostly on SAT instances generated using uniform random distributions, where all constraints are independently generated, and the problem variables are all considered of equal importance. These assumptions are unfortunately not satisfied by most real problems. Our project aims for a deeper understanding of hardness of SAT problems that arise in practice. We study two key questions: (i) How does…
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Taxonomy
TopicsComputational Drug Discovery Methods · Constraint Satisfaction and Optimization · Advanced Graph Theory Research
