EvoGPT-f: An Evolutionary GPT Framework for Benchmarking Formal Math
Languages

EvoGPT-f on arXiv <https://arxiv.org/abs/2402.16878>

Abstract

Formal mathematics is the discipline of translating mathematics into a
programming language in which any statement can be unequivocally checked by
a computer. Mathematicians and computer scientists have spent decades of
painstaking formalization efforts developing languages such as Coq, HOL,
and Lean. Machine learning research has converged on these formal math
corpora and given rise to an assortment of methodologies to aid in
interactive and automated theorem proving. However, these papers have
primarily focused on one method, for one proof task, in one language. This
paper introduces EvoGPT-f: a novel evolutionary framework for the first
systematic quantitative analysis of the differential machine learnability
of five formal math corpora (Lean 3, Lean 4, Coq, HOL 4, HOL Light) using
four tokenization methods (character, word-level, Byte Pair Encoding and
StarCoder tokenizer). This paper does not put to rest the question of the
"best" or "easiest" language to learn. Rather, this framework and
preliminary findings begin to illuminate the differential machine
learnability of these languages, offering a foundation to forge more
systematic quantitative and qualitative comparative research across
communities.
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