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4 months ago

Premise Selection for Theorem Proving by Deep Graph Embedding

Mingzhe Wang; Yihe Tang; Jian Wang; Jia Deng

Premise Selection for Theorem Proving by Deep Graph Embedding

Abstract

We propose a deep learning-based approach to the problem of premise selection: selecting mathematical statements relevant for proving a given conjecture. We represent a higher-order logic formula as a graph that is invariant to variable renaming but still fully preserves syntactic and semantic information. We then embed the graph into a vector via a novel embedding method that preserves the information of edge ordering. Our approach achieves state-of-the-art results on the HolStep dataset, improving the classification accuracy from 83% to 90.3%.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
automated-theorem-proving-on-holstepFormulaNet-basic
Classification Accuracy: 0.891
automated-theorem-proving-on-holstepFormulaNet
Classification Accuracy: 0.903
automated-theorem-proving-on-holstep-1FormulaNet-basic
Classification Accuracy: 0.890
automated-theorem-proving-on-holstep-1FormulaNet
Classification Accuracy: 0.900

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