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arXiv 提交日期: 2026-04-07
📄 Abstract - From Large Language Model Predicates to Logic Tensor Networks: Neurosymbolic Offer Validation in Regulated Procurement

We present a neurosymbolic approach, i.e., combining symbolic and subsymbolic artificial intelligence, to validating offer documents in regulated public institutions. We employ a language model to extract information and then aggregate with an LTN (Logic Tensor Network) to make an auditable decision. In regulated public institutions, decisions must be made in a manner that is both factually correct and legally verifiable. Our neurosymbolic approach allows existing domain-specific knowledge to be linked to the semantic text understanding of language models. The decisions resulting from our pipeline can be justified by predicate values, rule truth values, and corresponding text passages, which enables rule checking based on a real corpus of offer documents. Our experiments on a real corpus show that the proposed pipeline achieves performance comparable to existing models, while its key advantage lies in its interpretability, modular predicate extraction, and explicit support for XAI (Explainable AI).

顶级标签: llm natural language processing systems
详细标签: neurosymbolic ai logic tensor networks document validation explainable ai information extraction 或 搜索:

从大语言模型谓词到逻辑张量网络:受监管采购中的神经符号化报价验证 / From Large Language Model Predicates to Logic Tensor Networks: Neurosymbolic Offer Validation in Regulated Procurement


1️⃣ 一句话总结

这篇论文提出了一种将大语言模型与逻辑张量网络相结合的神经符号化方法,用于在受监管的公共机构中验证采购报价文件,该方法在保持高准确性的同时,提供了可解释、可审计的决策依据。

源自 arXiv: 2604.05539