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Lightweight Online Learning for Sets of Related Problems in Automated Reasoning

Authors :
Wu, Haoze
Hahn, Christopher
Lonsing, Florian
Mann, Makai
Ramanujan, Raghuram
Barrett, Clark
Publication Year :
2023

Abstract

We present Self-Driven Strategy Learning ($\textit{sdsl}$), a lightweight online learning methodology for automated reasoning tasks that involve solving a set of related problems. $\textit{sdsl}$ does not require offline training, but instead automatically constructs a dataset while solving earlier problems. It fits a machine learning model to this data which is then used to adjust the solving strategy for later problems. We formally define the approach as a set of abstract transition rules. We describe a concrete instance of the sdsl calculus which uses conditional sampling for generating data and random forests as the underlying machine learning model. We implement the approach on top of the Kissat solver and show that the combination of Kissat+$\textit{sdsl}$ certifies larger bounds and finds more counter-examples than other state-of-the-art bounded model checking approaches on benchmarks obtained from the latest Hardware Model Checking Competition.<br />Comment: Condensed version published at FMCAD'23

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.11087
Document Type :
Working Paper