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The Face of Quality in Crowdsourcing Relevance Labels: Demographics, Personality and Labeling Accuracy

机译:面对众包相关标签的质量:人口统计,人格和标签准确性

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Information retrieval systems require human contributed relevance labels for their training and evaluation. Increasingly such labels are collected under the anonymous, uncontrolled conditions of crowdsourcing, leading to varied output quality. While a range of quality assurance and control techniques have now been developed to reduce noise during or after task completion, little is known about the workers themselves and possible relationships between workers' characteristics and the quality of their work. In this paper, we ask how do the relatively well or poorly-performing crowds, working under specific task conditions, actually look like in terms of worker characteristics, such as demographics or personality traits. Our findings show that the face of a crowd is in fact indicative of the quality of their work.
机译:信息检索系统需要人类贡献相关标签进行培训和评估。越来越多地在匿名的众包的不受控制条件下收集这些标签,导致各种产出质量。虽然现在已经开发了一系列质量保证和控制技术来减少任务完成期间或之后的噪音,但对于工人本身而言,众所周知,工人特征与工作质量之间的可能关系。在本文中,我们询问了在特定任务条件下的相对良好或表现不佳的人群,实际上在工人特征方面,如人口统计或人格特质。我们的研究结果表明,人群的面貌实际上表明了他们的工作质量。

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