众包竞赛中的显著性偏差

Salience Bias in Crowdsourcing Contests

Information Systems Research · 2018
被引 89
FT 50UTD 24ABS 4★

中文导读

研究了众包平台上反馈信息与工作者显著性偏差如何影响竞赛结果,发现显著性偏差影响参赛者表现,且参赛人数会调节其作用。

Abstract

Crowdsourcing relies on online platforms to connect a community of users to perform specific tasks. However, without appropriate control, the behavior of the online community might not align with the platform’s designed objective, which can lead to an inferior platform performance. This paper investigates how the feedback information on a crowdsourcing platform and systematic bias of crowdsourcing workers can affect crowdsourcing outcomes. Specifically, using archival data from the online crowdsourcing platform Kaggle, combined with survey data from actual Kaggle contest participants, we examine the role of a systematic bias, namely, the salience bias, in influencing the performance of the crowdsourcing workers and how the number of crowdsourcing workers moderates the impact of the salience bias on the outcomes of contests. Our results suggest that the salience bias influences the performance of contestants, including the winners of the contests. Furthermore, the number of participating contestants may attenuate or amplify the impact of the salience bias on the outcomes of contests, depending on the effort required to complete the tasks. Our results have critical implications for crowdsourcing firms and platform designers. The online appendix is available at https://doi.org/10.1287/isre.2018.0775 .

众包行为偏差在线平台竞赛设计