Model Counting in the Wild

Arijit Shaw, Kuldeep S. Meel
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Abstract

Model counting is a fundamental problem in automated reasoning with applications in probabilistic inference, network reliability, neural network verification, and more. Although model counting is computationally intractable from a theoretical perspective due to its #P-completeness, the past decade has seen significant progress in developing state-of-the-art model counters to address scalability challenges. In this work, we conduct a rigorous assessment of the scalability of model counters in the wild. To this end, we surveyed 11 application domains and collected an aggregate of 2262 benchmarks from these domains. We then evaluated six state-of-the-art model counters on these instances to assess scalability and runtime performance. Our empirical evaluation demonstrates that the performance of model counters varies significantly across different application domains, underscoring the need for careful selection by the end user. Additionally, we investigated the behavior of different counters with respect to two parameters suggested by the model counting community, finding only a weak correlation. Our analysis highlights the challenges and opportunities for portfolio-based approaches in model counting.
野外模型计数
模型计数是自动推理中的一个基本问题,可应用于概率推理、网络可靠性、神经网络验证等领域。尽管由于模型计数的#P完备性,从理论角度看模型计数在计算上是难以实现的,但过去十年来,在开发最先进的模型计数器以解决可扩展性挑战方面取得了重大进展。在这项工作中,我们对野生模型计数器的可扩展性进行了严格评估。为此,我们调查了 11 个应用领域,并从这些领域中收集了 2262 个基准。然后,我们在这些实例上评估了六种最先进的模型计数器,以评估可扩展性和运行时性能。我们的实证评估结果表明,模型计数器的性能在不同应用领域之间存在显著差异,这突出表明终端用户需要谨慎选择。此外,我们还研究了不同计数器的行为与模型计数社区建议的两个参数之间的关系,结果发现两者之间只有微弱的相关性。我们的分析凸显了基于组合的模型计数方法所面临的挑战和机遇。
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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