cs.AI updates on arXiv.org 10月07日
四维波尔兹曼连续优化框架:CSP求解新途径
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本文提出一种名为FourierCSP的连续优化框架,将沃尔什-傅里叶变换推广到约束满足问题(CSP)中,有效处理复杂约束,并展示其在SAT问题上的高效求解能力。

arXiv:2510.04480v1 Announce Type: new Abstract: Constraint satisfaction problems (CSPs) are fundamental in mathematics, physics, and theoretical computer science. While conflict-driven clause learning Boolean Satisfiability (SAT) solvers have achieved remarkable success and become the mainstream approach for Boolean satisfiability, recent advances show that modern continuous local search (CLS) solvers can achieve highly competitive results on certain classes of SAT problems. Motivated by these advances, we extend the CLS framework from Boolean SAT to general CSP with finite-domain variables and expressive constraints. We present FourierCSP, a continuous optimization framework that generalizes the Walsh-Fourier transform to CSP, allowing for transforming versatile constraints to compact multilinear polynomials, thereby avoiding the need for auxiliary variables and memory-intensive encodings. Our approach leverages efficient evaluation and differentiation of the objective via circuit-output probability and employs a projected gradient optimization method with theoretical guarantees. Empirical results on benchmark suites demonstrate that FourierCSP is scalable and competitive, significantly broadening the class of problems that can be efficiently solved by CLS techniques.

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约束满足问题 连续优化 FourierCSP SAT求解 沃尔什-傅里叶变换
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