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Quantifiers for Differentiable Logics in Rocq (Extended Abstract)

Research output: Conference Article in Proceeding or Book/Report chapterArticle in proceedingsResearchpeer-review

Abstract

The interpretation of logical expressions into loss functions has given rise to so-called differentiable logics. They function as a bridge between formal logic and machine learning, offering a novel approach for property-driven training. The added expressiveness of these logics comes at the price of a more intricate semantics for first-order quantifiers. To ease their integration into machine-learning backends, we explore how to formalize semantics for first-order differentiable logics using the Mathematical Components library in the Rocq proof assistant. We seek to give rigorous semantics for quantifiers, verify their properties with respect to other logical connectives, as well as prove the soundness and completeness of the resulting logics.
Original languageEnglish
Title of host publication8th International Symposium on AI Verification (SAIV 2025), Zagreb, Croatia, July 21--22, 2025
Number of pages12
Publication date2025
Pages1-12
Publication statusPublished - 2025
Event International Symposium on AI Verification - Zagreb, Croatia
Duration: 21 Jul 202522 Jul 2025
Conference number: 8
https://aiverification.org/2025/

Symposium

Symposium International Symposium on AI Verification
Number8
Country/TerritoryCroatia
CityZagreb
Period21/07/202522/07/2025
Internet address

Keywords

  • Neural Network Verification
  • Formal Specifications
  • Loss Functions
  • Differentiable Logics
  • Interactive Theorem Proving

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