CCLemma: E-Graph Guided Lemma Discovery for Inductive Equational Proofs

Author:

Kurashige Cole1ORCID,Ji Ruyi2ORCID,Giridharan Aditya1ORCID,Barbone Mark1ORCID,Noor Daniel3ORCID,Itzhaky Shachar3ORCID,Jhala Ranjit1ORCID,Polikarpova Nadia1ORCID

Affiliation:

1. University of California, San Diego, USA

2. Peking University, Beijing, China

3. Technion, Haifa, Israel

Abstract

The problem of automatically proving the equality of terms over recursive functions and inductive data types is challenging, as such proofs often require auxiliary lemmas which must themselves be proven. Previous attempts at lemma discovery compromise on either efficiency or efficacy. Goal-directed approaches are fast but limited in expressiveness, as they can only discover auxiliary lemmas which entail their goals. Theory exploration approaches are expressive but inefficient, as they exhaustively enumerate candidate lemmas. We introduce e-graph guided lemma discovery , a new approach to finding equational proofs that makes theory exploration goal-directed. We accomplish this by using e-graphs and equality saturation to efficiently construct and compactly represent the space of all goal-oriented proofs. This allows us to explore only those auxiliary lemmas guaranteed to help make progress on some of these proofs. We implemented our method in a new prover called CCLemma and compared it with three state-of-the-art provers across a variety of benchmarks. CCLemma performs consistently well on two standard benchmarks and additionally solves 50% more problems than the next best tool on a new challenging set.

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

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2. Automating Inductive Proofs Using Theory Exploration

3. Simon Cruanes. 2017. Superposition with Structural Induction. In Frontiers of Combining Systems, Clare Dixon and Marcelo Finger (Eds.). Springer International Publishing, Cham. 172–188. isbn:978-3-319-66167-4

4. Leonardo Mendonca de Moura and Nikolaj Bjorner. 2007. Efficient E-Matching for SMT Solvers.. In CADE (Lecture Notes in Computer Science, Vol. 4603). Springer, 183–198.

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