The content discusses the fragmented nature of research in Interactive Theorem Proving (ITP) and introduces BAIT as a framework for benchmarking learning approaches. It emphasizes the significance of embedding architectures, particularly comparing Structure Aware Transformers with other models across various ITP benchmarks. Through supervised and end-to-end experiments, improvements in performance are observed, showcasing the critical role of embedding models in enhancing system capabilities.
The article delves into key concepts such as AI-ITP systems, learning approaches like supervised learning and reinforcement learning, encoder models, proof search strategies, and tactic selection methods. It provides detailed insights into how different architectures impact performance metrics across diverse benchmarks. Additionally, it explores limitations due to computational constraints and suggests future directions for research using BAIT.
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by Sean Lamont,... às arxiv.org 03-07-2024
https://arxiv.org/pdf/2403.03401.pdfPerguntas Mais Profundas