QirK:通过知识图谱上的中间表示进行问题解答

Jan Luca Scheerer, Anton Lykov, Moe Kayali, Ilias Fountalis, Dan Olteanu, Nikolaos Vasiloglou, Dan Suciu
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引用次数: 0

摘要

我们展示了 QirK,这是一个在知识图谱(KG)上回答自然语言问题的系统。QirK 可以回答结构复杂的问题,而新兴的大型语言模型 (LLM) 仍然无法做到这一点。它将数据库技术、LLM 和向量嵌入的语义搜索独特地结合在一起。这些组件的粘合剂是中间呈现(IR)。输入问题使用 LLM 映射到 IR,然后借助向量嵌入的语义搜索将其修复为有效的关系数据库查询。这样就可以将 LLM 能力和 KG 可靠性结合起来。演示 QirK 的视频短片请访问:https://youtu.be/6c81BLmOZ0U。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
QirK: Question Answering via Intermediate Representation on Knowledge Graphs
We demonstrate QirK, a system for answering natural language questions on Knowledge Graphs (KG). QirK can answer structurally complex questions that are still beyond the reach of emerging Large Language Models (LLMs). It does so using a unique combination of database technology, LLMs, and semantic search over vector embeddings. The glue for these components is an intermediate representation (IR). The input question is mapped to IR using LLMs, which is then repaired into a valid relational database query with the aid of a semantic search on vector embeddings. This allows a practical synthesis of LLM capabilities and KG reliability. A short video demonstrating QirK is available at https://youtu.be/6c81BLmOZ0U.
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