SAT Feature Analysis for Machine Learning Classification Tasks

Marco Dalla, Benjamin Provan-Bessell, Andrea Visentin, B. O’Sullivan
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Abstract

The extraction of meaningful features from CNF instances is crucial to applying machine learning to SAT solving, enabling algorithm selection and configuration for solver portfolios and satisfiability classification. While many approaches have been proposed for feature extraction, their relevance to these tasks is unclear. Their applicability and comparison of the information extracted and the computational effort needed are complicated by the lack of working or updated implementations, negatively affecting reproducibility. In this paper, we analyse the performance of five sets of features presented in the literature on SAT/UNSAT and problem category classification over a dataset of 3000 instances across ten problem classes distributed equally between SAT and UNSAT. To increase reproducibility and encourage research in this area, we released a Python library containing an updated and clear implementation of structural, graph-based, statistical and probing features presented in the literature for SAT CNF instances; and we define a clear pipeline to compare feature sets in a given learning task robustly. We analysed which of the computed features are relevant for the specific task and the tradeoff they provide between accuracy and computational effort. The results of the analysis provide insights into which features mostly affect an instance's satisfiability and which can be used to identify the problem's type. These insights can be used to develop more effective solver portfolios and satisfiability classification algorithms.
机器学习分类任务的SAT特征分析
从CNF实例中提取有意义的特征对于将机器学习应用于SAT求解至关重要,这使得求解器组合的算法选择和配置以及可满意度分类成为可能。虽然已经提出了许多特征提取方法,但它们与这些任务的相关性尚不清楚。由于缺乏有效的或更新的实现,它们的适用性和对提取的信息和所需计算量的比较变得复杂,从而对再现性产生负面影响。在本文中,我们分析了SAT/UNSAT文献中提出的五组特征的性能,以及在SAT和UNSAT之间平均分布的10个问题类别的3000个实例的数据集上的问题类别分类。为了提高可重复性并鼓励这一领域的研究,我们发布了一个Python库,其中包含了文献中针对SAT CNF实例提出的结构、基于图、统计和探测特征的更新和清晰实现;我们定义了一个清晰的管道来鲁棒地比较给定学习任务中的特征集。我们分析了哪些计算特征与特定任务相关,以及它们在准确性和计算工作量之间提供的权衡。分析的结果可以帮助您了解哪些特性对实例的满意度影响最大,哪些特性可用于识别问题的类型。这些见解可用于开发更有效的求解器组合和可满足性分类算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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