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Using Crowdsourcing and Active Learning to Track Sentiment in Online Media

机译:使用众群和积极学习在线媒体跟踪情绪

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Tracking sentiment in the popular media has long been of interest to media analysts and pundits. With the availability of news content via online syndicated feeds, it is now possible to automate some aspects of this process. There is also great potential to crowd source much of the annotation work that is required training a machine learning system to perform sentiment scoring. We describe such a system for tracking economic sentiment in online media that has been deployed since August 2009. It uses annotations provided by a cohort of non-expert annotators to train a learning system to classify a large body of news items. We report on the design challenges addressed in managing the effort of the annotators and in making annotation an interesting experience.
机译:流行媒体的跟踪情绪长期以来对媒体分析师和Pundits感兴趣。随着通过在线综合源的新闻内容的可用性,现在可以自动化此过程的某些方面。人群源也有很大的潜力来源是需要培训机器学习系统以进行情感评分的批注工作。我们描述了自2009年8月以来一直在部署的在线媒体中跟踪经济情绪的系统。它使用了非专家注释器队列提供的注释来培训学习系统来分类大型新闻项目。我们报告了管理注册人员努力的设计挑战,并在制定有趣的经验中。

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