Bayesian Optimisation with Gaussian Processes for Premise Selection

Słowik, Agnieszka, Mangla, Chaitanya, Jamnik, Mateja, Holden, Sean B., Paulson, Lawrence C.

arXiv.org Artificial Intelligence 

Heuristics in theorem provers are often parameterised. Modern theorem provers such as Vampire utilise a wide array of heuristics to control the search space explosion, thereby requiring optimisation of a large set of parameters. An exhaustive search in this multi-dimensional parameter space is intractable in most cases, yet the performance of the provers is highly dependent on the parameter assignment. In this work, we introduce a principled probablistic framework for heuristics optimisation in theorem provers. We present results using a heuristic for premise selection and The Archive of Formal Proofs (AFP) as a case study.

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