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Tractable Weighted First-Order Model Counting with Bounded Treewidth Binary Evidence

12 November 2025
Václav Kůla
Qipeng Kuang
Yuyi Wang
Yuanhong Wang
Ondrej Kuzelka
    TPM
ArXiv (abs)PDFHTMLGithub
Main:15 Pages
3 Figures
Bibliography:3 Pages
2 Tables
Abstract

The Weighted First-Order Model Counting Problem (WFOMC) asks to compute the weighted sum of models of a given first-order logic sentence over a given domain. Conditioning WFOMC on evidence -- fixing the truth values of a set of ground literals -- has been shown impossible in time polynomial in the domain size (unless #P⊆FP\mathsf{\#P \subseteq FP}#P⊆FP) even for fragments of logic that are otherwise tractable for WFOMC without evidence. In this work, we address the barrier by restricting the binary evidence to the case where the underlying Gaifman graph has bounded treewidth. We present a polynomial-time algorithm in the domain size for computing WFOMC for the two-variable fragments FO2\text{FO}^2FO2 and C2\text{C}^2C2 conditioned on such binary evidence. Furthermore, we show the applicability of our algorithm in combinatorial problems by solving the stable seating arrangement problem on bounded-treewidth graphs of bounded degree, which was an open problem. We also conducted experiments to show the scalability of our algorithm compared to the existing model counting solvers.

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