KNOWNET: Guided Health Information Seeking from LLMs via Knowledge Graph Integration.

Youfu Yan, Yu Hou, Yongkang Xiao, Rui Zhang, Qianwen Wang
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Abstract

The increasing reliance on Large Language Models (LLMs) for health information seeking can pose severe risks due to the potential for misinformation and the complexity of these topics. This paper introduces KNOWNET a visualization system that integrates LLMs with Knowledge Graphs (KG) to provide enhanced accuracy and structured exploration. Specifically, for enhanced accuracy, KNOWNET extracts triples (e.g., entities and their relations) from LLM outputs and maps them into the validated information and supported evidence in external KGs. For structured exploration, KNOWNET provides next-step recommendations based on the neighborhood of the currently explored entities in KGs, aiming to guide a comprehensive understanding without overlooking critical aspects. To enable reasoning with both the structured data in KGs and the unstructured outputs from LLMs, KNOWNET conceptualizes the understanding of a subject as the gradual construction of graph visualization. A progressive graph visualization is introduced to monitor past inquiries, and bridge the current query with the exploration history and next-step recommendations. We demonstrate the effectiveness of our system via use cases and expert interviews.

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KNOWNET:通过知识图谱整合引导从 LLMs 中获取健康信息。
由于这些主题的潜在误导性和复杂性,越来越多的人依赖大语言模型(LLM)来寻求健康信息,这可能会带来严重的风险。本文介绍的 KNOWNET 是一种可视化系统,它将 LLM 与知识图谱 (KG) 相整合,以提供更高的准确性和结构化探索。具体来说,为了提高准确性,KNOWNET 从 LLM 输出中提取三元组(如实体及其关系),并将其映射到外部 KG 中的验证信息和支持证据。对于结构化探索,KNOWNET 会根据当前探索的实体在幼稚园中的邻域提供下一步建议,目的是在不忽略关键方面的情况下引导全面理解。为了能够对 KG 中的结构化数据和 LLM 的非结构化输出进行推理,KNOWNET 将对主题的理解概念化为图形可视化的逐步构建。KNOWNET 引入了渐进式图形可视化来监控过去的查询,并将当前查询与探索历史和下一步建议联系起来。我们通过使用案例和专家访谈证明了我们系统的有效性。
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