消费者健康信息和问题回答:帮助消费者找到与健康相关的信息需求的答案

Dina Demner-Fushman, Yassine Mrabet, Asma Ben Abacha
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引用次数: 54

摘要

目的消费者越来越多地转向互联网搜索与健康有关的信息;他们希望自己的问题得到简短而精确的回答,而不是需要分析搜索引擎返回的相关文档列表,并阅读每个文档来找到答案。我们的目标是用可靠来源的信息回答消费者的健康问题。材料和方法我们结合基于知识、传统机器和深度学习的方法来理解消费者的问题,并从面向消费者的来源中选择最佳答案。我们根据MedlinePlus Alexa技能试点开发中产生的简单问题,以及消费者提交给国家医学图书馆的短问题和长问题,评估端到端系统及其组件。结果系统对简单Alexa问题的平均准确率为78.7%,平均倒数排名为87.9%;对美国国家医学图书馆消费者提交的实际问题的平均准确率为44.5%,平均倒数排名为51.6%。深度学习、领域知识和传统方法的集成可以很好地识别简单问题的问题类型和关注点,但在现实生活中的消费者问题上仍有改进的空间。信息检索方法本身就足以找到简单的Alexa问题的答案。然而,回答现实生活中的问题得益于信息检索和推理方法的结合。结论一项帮助消费者在健康相关问题上找到可靠答案的试点研究表明,对于大多数问题,都存在可靠答案,并且可以以可接受的准确性自动找到可靠答案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Consumer health information and question answering: helping consumers find answers to their health-related information needs
OBJECTIVE Consumers increasingly turn to the internet in search of health-related information; and they want their questions answered with short and precise passages, rather than needing to analyze lists of relevant documents returned by search engines and reading each document to find an answer. We aim to answer consumer health questions with information from reliable sources. MATERIALS AND METHODS We combine knowledge-based, traditional machine and deep learning approaches to understand consumers' questions and select the best answers from consumer-oriented sources. We evaluate the end-to-end system and its components on simple questions generated in a pilot development of MedlinePlus Alexa skill, as well as the short and long real-life questions submitted to the National Library of Medicine by consumers. RESULTS Our system achieves 78.7% mean average precision and 87.9% mean reciprocal rank on simple Alexa questions, and 44.5% mean average precision and 51.6% mean reciprocal rank on real-life questions submitted by National Library of Medicine consumers. DISCUSSION The ensemble of deep learning, domain knowledge, and traditional approaches recognizes question type and focus well in the simple questions, but it leaves room for improvement on the real-life consumers' questions. Information retrieval approaches alone are sufficient for finding answers to simple Alexa questions. Answering real-life questions, however, benefits from a combination of information retrieval and inference approaches. CONCLUSION A pilot practical implementation of research needed to help consumers find reliable answers to their health-related questions demonstrates that for most questions the reliable answers exist and can be found automatically with acceptable accuracy.
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