HOL4的前提选择和外部证明

Thibault Gauthier, C. Kaliszyk
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引用次数: 45

摘要

最近,学习辅助自动推理在Isabelle/HOL、HOL Light和Mizar的用户中越来越受欢迎。在本文中,我们提出了HOL4证明助手的附加组件和HOL(y)Hammer系统的改编,该系统也为HOL4提供基于机器学习的前提选择和自动推理。我们有效地记录HOL4依赖关系,并从定理陈述中提取特征,为前提选择提供依据。HOL(y)Hammer将HOL4语句转换成各种TPTP-ATP证明格式,然后由atp处理。我们讨论了不同的评估设置:atp、可访问引理和前提数。我们在HOL4标准库上测量了HOL(y)Hammer的性能。结果被相应地结合起来,并与HOL光实验进行比较,显示出相当高的预测质量。该系统通过自动发现可以由Metis重建的证据依赖关系,直接使HOL4用户受益。
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Premise Selection and External Provers for HOL4
Learning-assisted automated reasoning has recently gained popularity among the users of Isabelle/HOL, HOL Light, and Mizar. In this paper, we present an add-on to the HOL4 proof assistant and an adaptation of the HOL(y)Hammer system that provides machine learning-based premise selection and automated reasoning also for HOL4. We efficiently record the HOL4 dependencies and extract features from the theorem statements, which form a basis for premise selection. HOL(y)Hammer transforms the HOL4 statements in the various TPTP-ATP proof formats, which are then processed by the ATPs. We discuss the different evaluation settings: ATPs, accessible lemmas, and premise numbers. We measure the performance of HOL(y)Hammer on the HOL4 standard library. The results are combined accordingly and compared with the HOL Light experiments, showing a comparably high quality of predictions. The system directly benefits HOL4 users by automatically finding proofs dependencies that can be reconstructed by Metis.
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