Who Broke Amazon Mechanical Turk?

Author:

Marshall Catherine C.1ORCID,Goguladinne Partha S.R.2ORCID,Maheshwari Mudit2ORCID,Sathe Apoorva2ORCID,Shipman Frank M.2ORCID

Affiliation:

1. Department of Computer Science and Engineering, Texas A and M University, USA

2. Department of Computer Science and Engineering, Texas A&M University, USA

Publisher

ACM

Reference44 articles.

1. Douglas J. Ahler , Carolyn E. Rous , Gaurav Sood . 2019 . The Micro-Task Market for Lemons: Data Quality on Amazon's Mechanical Turk . Proc. 2019 Meeting of Midwest Political Science Assn, ret. July 22, 2019. Douglas J. Ahler, Carolyn E. Rous, Gaurav Sood. 2019. The Micro-Task Market for Lemons: Data Quality on Amazon's Mechanical Turk. Proc. 2019 Meeting of Midwest Political Science Assn, ret. July 22, 2019.

2. Debugging a Crowdsourced Task with Low Inter-Rater Agreement

3. [ 3 ] Amazon Mechanical Turk . 2019. MTurk Worker Quality and Identity. Blog post dated 25 March 2019 . https://blog.mturk.com/mturk-worker-identity-and-task-quality-d3be46d83d0d [3] Amazon Mechanical Turk. 2019. MTurk Worker Quality and Identity. Blog post dated 25 March 2019. https://blog.mturk.com/mturk-worker-identity-and-task-quality-d3be46d83d0d

4. Amazon Mechanical Turk . 2020. Important updates on MTurk marketplace integrity , Worker identity and Requester tools to manage task quality. Blog post dated 20 March 2020 . Amazon Mechanical Turk. 2020. Important updates on MTurk marketplace integrity, Worker identity and Requester tools to manage task quality. Blog post dated 20 March 2020.

5. F. Bentley , N. Daskalova , and B. White . 2017 Comparing the Reliability of Amazon Mechanical Turk and Survey Monkey to Traditional Market Research Surveys . Proc. CHI EA '17 . ACM, New York, NY, USA , 1092 - 1099 . F. Bentley, N. Daskalova, and B. White. 2017 Comparing the Reliability of Amazon Mechanical Turk and Survey Monkey to Traditional Market Research Surveys. Proc. CHI EA '17. ACM, New York, NY, USA, 1092-1099.

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