English

Systematic Parameter Decision in Approximate Model Counting

Artificial Intelligence 2025-05-22 v2

Abstract

This paper proposes a novel approach to determining the internal parameters of the hashing-based approximate model counting algorithm ApproxMC\mathsf{ApproxMC}. In this problem, the chosen parameter values must ensure that ApproxMC\mathsf{ApproxMC} is Probably Approximately Correct (PAC), while also making it as efficient as possible. The existing approach to this problem relies on heuristics; in this paper, we solve this problem by formulating it as an optimization problem that arises from generalizing ApproxMC\mathsf{ApproxMC}'s correctness proof to arbitrary parameter values. Our approach separates the concerns of algorithm soundness and optimality, allowing us to address the former without the need for repetitive case-by-case argumentation, while establishing a clear framework for the latter. Furthermore, after reduction, the resulting optimization problem takes on an exceptionally simple form, enabling the use of a basic search algorithm and providing insight into how parameter values affect algorithm performance. Experimental results demonstrate that our optimized parameters improve the runtime performance of the latest ApproxMC\mathsf{ApproxMC} by a factor of 1.6 to 2.4, depending on the error tolerance.

Keywords

Cite

@article{arxiv.2504.05874,
  title  = {Systematic Parameter Decision in Approximate Model Counting},
  author = {Jinping Lei and Toru Takisaka and Junqiang Peng and Mingyu Xiao},
  journal= {arXiv preprint arXiv:2504.05874},
  year   = {2025}
}