用于问题解答系统的特定领域嵌入:健康指导常见问题

Andreas Martin, Charuta Pande, Sandro Schwander, A. Ajuwon, Christoph Pimmer
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引用次数: 0

摘要

常见问题解答(FAQ)被广泛用于满足用户在知识领域中的知识需求。虽然 LLM 可能是解决用户问题的一种有前途的方法,但它们仍然容易产生幻觉,即不准确或错误的回答,这可能会导致大量问题,包括但不限于道德问题。作为针对尼日利亚年轻艾滋病客户的医疗保健指导聊天机器人的一部分,通过常见问题满足他们的信息需求是主要的指导要求之一。在本文中,我们探讨了能否将艾滋病常见问题中的领域知识表示为文本嵌入,以检索与用户查询相匹配的类似问题,从而提高聊天机器人的理解能力和用户的满意度。具体来说,我们描述了为艾滋病领域开发常见问题聊天机器人的方法。我们使用了英语和皮金语的预定义常见问题问答知识库,该知识库由来自尼日利亚和瑞士的艾滋病客户和专家共同创建。参与后调查的结果显示,聊天机器人大多能理解用户的问题,并能识别相关的匹配问题和检索适当的回复。
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Domain-specific Embeddings for Question-Answering Systems: FAQs for Health Coaching
FAQs are widely used to respond to users’ knowledge needs within knowledge domains. While LLM might be a promising way to address user questions, they are still prone to hallucinations i.e., inaccurate or wrong responses, which, can, inter alia, lead to massive problems, including, but not limited to, ethical issues. As a part of the healthcare coach chatbot for young Nigerian HIV clients, the need to meet their information needs through FAQs is one of the main coaching requirements. In this paper, we explore if domain knowledge in HIV FAQs can be represented as text embeddings to retrieve similar questions matching user queries, thus improving the understanding of the chatbot and the satisfaction of the users. Specifically, we describe our approach to developing an FAQ chatbot for the domain of HIV. We used a predefined FAQ question-answer knowledge base in English and Pidgin co-created by HIV clients and experts from Nigeria and Switzerland. The results of the post-engagement survey show that the chatbot mostly understood the user’s questions and could identify relevant matching questions and retrieve an appropriate response.
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