MaxSAT with Absolute Value Functions: A Parameterized Perspective
Max Bannach, Pamela Fleischmann, Malte Skambath

TL;DR
This paper explores the weighted MaxSAT problem with negative weights and absolute value maximization, revealing fixed-parameter tractability and kernelization results in this more complex setting.
Contribution
It introduces the study of MaxSAT with negative weights and absolute value objectives, proving fixed-parameter tractability and providing kernelization techniques.
Findings
MaxSAT with negative weights is W[1]-hard in general.
Maximizing the absolute value of the sum is fixed-parameter tractable.
A kernelization for hypergraph problems related to absolute weight maximization.
Abstract
The natural generalization of the Boolean satisfiability problem to optimization problems is the task of determining the maximum number of clauses that can simultaneously be satisfied in a propositional formula in conjunctive normal form. In the weighted maximum satisfiability problem each clause has a positive weight and one seeks an assignment of maximum weight. The literature almost solely considers the case of positive weights. While the general case of the problem is only restricted slightly by this constraint, many special cases become trivial in the absence of negative weights. In this work we study the problem with negative weights and observe that the problem becomes computationally harder - which we formalize from a parameterized perspective in the sense that various variations of the problem become W[1]-hard if negative weights are present. Allowing negative weights also…
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