Powering an AI Chatbot with Expert Sourcing to Support Credible Health Information Access

Ziang Xiao, Q. Liao, Michelle X. Zhou, Tyrone Grandison, Yunyao Li
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引用次数: 10

Abstract

During a public health crisis like the COVID-19 pandemic, a credible and easy-to-access information portal is highly desirable. It helps with disease prevention, public health planning, and misinformation mitigation. However, creating such an information portal is challenging because 1) domain expertise is required to identify and curate credible and intelligible content, 2) the information needs to be updated promptly in response to the fast-changing environment, and 3) the information should be easily accessible by the general public; which is particularly difficult when most people do not have the domain expertise about the crisis. In this paper, we presented an expert-sourcing framework and created Jennifer, an AI chatbot, which serves as a credible and easy-to-access information portal for individuals during the COVID-19 pandemic. Jennifer was created by a team of over 150 scientists and health professionals around the world, deployed in the real world and answered thousands of user questions about COVID-19. We evaluated Jennifer from two key stakeholders’ perspectives, expert volunteers and information seekers. We first interviewed experts who contributed to the collaborative creation of Jennifer to learn about the challenges in the process and opportunities for future improvement. We then conducted an online experiment that examined Jennifer’s effectiveness in supporting information seekers in locating COVID-19 information and gaining their trust. We share the key lessons learned and discuss design implications for building expert-sourced and AI-powered information portals, along with the risks and opportunities of misinformation mitigation and beyond.
为AI聊天机器人提供专家资源,以支持可靠的健康信息访问
在COVID-19大流行等公共卫生危机期间,非常需要一个可信且易于访问的信息门户。它有助于疾病预防、公共卫生规划和减少错误信息。然而,创建这样一个信息门户是具有挑战性的,因为1)需要领域专业知识来识别和管理可信和可理解的内容,2)信息需要及时更新以响应快速变化的环境,以及3)信息应该容易被公众访问;在大多数人对危机缺乏专业知识的情况下,这一点尤其困难。在本文中,我们提出了一个专家采购框架,并创建了人工智能聊天机器人Jennifer,作为COVID-19大流行期间个人可靠且易于访问的信息门户。珍妮弗是由世界各地150多名科学家和卫生专业人员组成的团队创建的,部署在现实世界中,回答了数千个关于COVID-19的用户问题。我们从两个关键的利益相关者,专家志愿者和信息寻求者的角度来评估Jennifer。我们首先采访了参与Jennifer协作创作的专家,以了解过程中的挑战和未来改进的机会。然后,我们进行了一项在线实验,检验了詹妮弗在支持信息寻求者查找COVID-19信息并获得他们信任方面的有效性。我们分享了吸取的主要经验教训,并讨论了构建专家来源和人工智能支持的信息门户的设计含义,以及缓解错误信息等方面的风险和机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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