Learning Probabilistic Termination Proofs

Author:

Abate Alessandro,Giacobbe Mirco,Roy Diptarko

Abstract

AbstractWe present the first machine learning approach to the termination analysis of probabilistic programs. Ranking supermartingales (RSMs) prove that probabilistic programs halt, in expectation, within a finite number of steps. While previously RSMs were directly synthesised from source code, our method learns them from sampled execution traces. We introduce the neural ranking supermartingale: we let a neural network fit an RSM over execution traces and then we verify it over the source code using satisfiability modulo theories (SMT); if the latter step produces a counterexample, we generate from it new sample traces and repeat learning in a counterexample-guided inductive synthesis loop, until the SMT solver confirms the validity of the RSM. The result is thus a sound witness of probabilistic termination. Our learning strategy is agnostic to the source code and its verification counterpart supports the widest range of probabilistic single-loop programs that any existing tool can handle to date. We demonstrate the efficacy of our method over a range of benchmarks that include linear and polynomial programs with discrete, continuous, state-dependent, multi-variate, hierarchical distributions, and distributions with undefined moments.

Publisher

Springer International Publishing

Cited by 11 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Quantitative Bounds on Resource Usage of Probabilistic Programs;Proceedings of the ACM on Programming Languages;2024-04-29

2. Stochastic Omega-Regular Verification and Control with Supermartingales;Lecture Notes in Computer Science;2024

3. A Deductive Verification Infrastructure for Probabilistic Programs;Proceedings of the ACM on Programming Languages;2023-10-16

4. Safety Certification for Stochastic Systems via Neural Barrier Functions;IEEE Control Systems Letters;2023

5. A Learner-Verifier Framework for Neural Network Controllers and Certificates of Stochastic Systems;Tools and Algorithms for the Construction and Analysis of Systems;2023

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