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A Conversational Chatbot Based on Kowledge-Graphs for Factoid Medical Questions

机译:基于知识图表的对话聊天,用于因子医学问题

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In the last years, the interest about enhancing the interface usability of applications has strongly increased, focusing, in particular, on chatbots, i.e. conversational agent that interacts with users, turn by turn using natural language. However, building chatbots for answering to questions over structured medical knowledge bases is a very thorny task and is still considered an open research challenge. In order to face this issue, this paper proposes a knowledge-based conversational chatbot for medical question answering, aimed at supporting: i) the formulation of factoid questions over medical knowledge bases; ii) the generation of more precise and contextualized dialog responses by analyzing the relations between entities in knowledge bases; iii) the detection of ambiguous user intents, with respect to the current dialog state and the suggestion of some interaction hints aimed at clarifying and/or confirming their meaning. A relevant characteristic of this system is represented by the usage of Knowledge Graphs to formally represent textual inputs given by the user as well as templates of questions and, contextually, efficiently navigate and use the domain knowledge of interest to provide an answer. The proposed chatbot has been implemented as a desktop application named "Medical Assistant" able to conversate with users interested to diagnose and identify the possible diseases causing a symptom, and find the most suitable treatment for a medical problem. It has been proficiently tested with respect to some factoid questions, showing its capability to help user reach the desired information also in the case of initial missing information.
机译:在过去的几年里,加强应用程序的界面可用性的兴趣强烈增加,特别是在Chatbots上,即与用户交互的会话代理,转向使用自然语言。然而,建立对由结构化医学知识库的问题的回答是一个非常棘手的任务,仍被认为是开放的研究挑战。要面对这个问题,本文提出了一种基于知识的会话聊天,用于医疗问题的回答,旨在支持:i)对医学知识库的因子问题的制定; ii)通过分析知识库中实体之间的关系,产生更精确和上下文化的对话响应; iii)关于当前对话状态的暗示用户意图的检测和旨在澄清和/或确认其含义的一些交互提示的建议。该系统的相关特征是由知识图表的用法代表用户提供的文本输入以及问题的模板以及上下文,有效地导航和使用域名知识来提供答案以提供答案。拟议的Chatbot已被实施为名为“医疗助理”的桌面应用程序,能够与有兴趣诊断和识别导致症状的可能疾病的用户对话,并找到最适合医疗问题的治疗。它已经熟练地测试了一些因素问题,显示其帮助用户在初始缺失信息的情况下达到所需信息的能力。

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