Publication | Open Access
Autoformalization with Large Language Models
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2022
Year
Artificial IntelligenceEngineeringVerificationAutomated ProofSuccessful Autoformalization SystemLarge Language ModelFormal VerificationNatural Language ProcessingLarge Language ModelsComputational LinguisticsProof ComplexityFormal Mathematical ReasoningLanguage StudiesMachine TranslationNatural Language MathematicsComputer ScienceSpeech TranslationAutomated ReasoningFormal MethodsProof AssistantProgram SynthesisLinguistics
Autoformalization is the process of automatically translating from natural language mathematics to formal specifications and proofs. A successful autoformalization system could advance the fields of formal verification, program synthesis, and artificial intelligence. While the long-term goal of autoformalization seemed elusive for a long time, we show large language models provide new prospects towards this goal. We make the surprising observation that LLMs can correctly translate a significant portion ($25.3\%$) of mathematical competition problems perfectly to formal specifications in Isabelle/HOL. We demonstrate the usefulness of this process by improving a previously introduced neural theorem prover via training on these autoformalized theorems. Our methodology results in a new state-of-the-art result on the MiniF2F theorem proving benchmark, improving the proof rate from $29.6\%$ to $35.2\%$.