Reputation as a Sufficient Condition for Data Quality on Amazon Mechanical Turk

Zotero / D&S Group / Top-Level Items 2015-01-22

Type Report Author Eyal Peer Author Joachim Vosgerau Author Alessandro Acquisti URL http://papers.ssrn.com/abstract=2363822 Place Rochester, NY Date 2013/12/05 Accessed 2015-01-21 19:23:15 Institution Social Science Research Network Report Type SSRN Scholarly Paper Library Catalog papers.ssrn.com Abstract Data quality is one of the major concerns of using crowdsourcing web sites such as Amazon Mechanical Turk (MTurk) to recruit participants for online behavioral studies. We compared two methods for ensuring data quality on MTurk: attention check questions (ACQs) and restricting participation to MTurk workers with high reputation (above 95% approval ratings). In Experiment 1, we found that high reputation workers rarely failed ACQs and provided higher quality data than low reputation workers; ACQs improved data quality only for low reputation workers, and only in some of the cases. Experiment 2 corroborated these findings and also suggested that more productive high reputation workers produce the highest quality data. We conclude that sampling high reputation workers can ensure high quality data without having to resort to using ACQs ,which may lead to selection bias if participants who fail ACQs are excluded post-hoc. Report Number ID 2363822