Arrow Research search
Back to SAT

SAT 2017

Dependency Learning for QBF

Conference Paper Quantified Boolean Formulas Logic in Computer Science · Satisfiability

Abstract

Abstract Quantified Boolean Formulas (QBFs) can be used to succinctly encode problems from domains such as formal verification, planning, and synthesis. One of the main approaches to QBF solving is Quantified Conflict Driven Clause Learning (QCDCL). By default, QCDCL assigns variables in the order of their appearance in the quantifier prefix so as to account for dependencies among variables. Dependency schemes can be used to relax this restriction and exploit independence among variables in certain cases, but only at the cost of nontrivial interferences with the proof system underlying QCDCL. We propose a new technique for exploiting variable independence within QCDCL that allows solvers to learn variable dependencies on the fly. The resulting version of QCDCL enjoys improved propagation and increased flexibility in choosing variables for branching while retaining ordinary (long-distance) Q-resolution as its underlying proof system. In experiments on standard benchmark sets, an implementation of this algorithm shows performance comparable to state-of-the-art QBF solvers.

Authors

Keywords

No keywords are indexed for this paper.

Context

Venue
International Conference on Theory and Applications of Satisfiability Testing
Archive span
2003-2025
Indexed papers
824
Paper id
962724955475334184