ProSLM : 用于可解释的特定领域知识型问题解答的 Prolog 协同语言模型

Priyesh Vakharia, Abigail Kufeldt, Max Meyers, Ian Lane, Leilani Gilpin
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引用次数: 0

摘要

神经符号方法可以通过纳入可解释的符号表示,为不透明的神经系统增加鲁棒性。然而,以前的方法并没有使用形式逻辑来对大型语言模型(LLM)的查询和输出进行语境化验证。我们提出了一个新颖的神经符号框架--systemname{},以提高大型语言模型在问题解答任务中的稳健性和可靠性。我们为systemname{}提供了一个特定领域的知识库、一个逻辑推理系统和一个与现有LLM的集成。该框架有两个功能:(1)上下文收集:为给定查询生成可解释的相关上下文;(2)验证:根据知识库(KB)确认和验证语句的事实准确性。我们的工作开辟了神经符号生成人工智能文本验证和用户个性化的新领域。
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ProSLM : A Prolog Synergized Language Model for explainable Domain Specific Knowledge Based Question Answering
Neurosymbolic approaches can add robustness to opaque neural systems by incorporating explainable symbolic representations. However, previous approaches have not used formal logic to contextualize queries to and validate outputs of large language models (LLMs). We propose \systemname{}, a novel neurosymbolic framework, to improve the robustness and reliability of LLMs in question-answering tasks. We provide \systemname{} with a domain-specific knowledge base, a logical reasoning system, and an integration to an existing LLM. This framework has two capabilities (1) context gathering: generating explainable and relevant context for a given query, and (2) validation: confirming and validating the factual accuracy of a statement in accordance with a knowledge base (KB). Our work opens a new area of neurosymbolic generative AI text validation and user personalization.
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