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Finding and validating medical information shared on Twitter: experiences using a crowdsourcing approach

机译:在推特上查找和验证医疗信息:使用众包的经验

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摘要

Social media provide users a channel to share meaningful and insightful information with their network of connected individuals. Harnessing this public information at scale is a powerful notion as social media is rife with public perceptions, signals, and data about a variety of topics. However, there is a common trade-off in collecting information from social media: the more specific the topic, the more challenging it is to extract reliable and truthful information. In this paper, we present an experience report describing our efforts in developing and applying a novel approach to identify, extract, and validate topic specific information using the Amazon Mechanical Turk (AMT) crowdsourcing platform. The approach was applied in a use-case where meaningful information about a medical condition (major depressive disorder) was successfully extracted from Twitter. Our approach, and lessons learned, may serve as a generic methodology for extracting relevant and meaningful data from social media platforms and help researchers who are interested in harnessing Twitter, AMT, and the like for reliable information discovery.
机译:社交媒体为用户提供了一个与他们的连接人网络分享有意义和富有洞察力的信息的频道。利用比例的公共信息是一个强大的概念,因为社交媒体具有关于各种主题的公众看法,信号和数据。但是,在从社交媒体收集信息中有一个常见的权衡:更具体的话题,提取可靠和真实信息的挑战性越具挑战性。在本文中,我们展示了一个经验报告,描述了我们在开发和应用一种新颖的方法来识别,提取和验证专题特定信息的新方法,使用亚马逊机械土耳其众包平台。该方法应用于有关医疗状况(重大抑郁症)的有意义信息的用例中应用了从Twitter中提取的。我们的方法和经验教训可以作为从社交媒体平台提取相关和有意义的数据的通用方法,并帮助您对利用Twitter,AMT等的研究人员进行可靠的信息发现。

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