Crowd guilds: Worker-led reputation and feedback on crowdsourcing platforms

Book chapter


Whiting, M . E., Gamage, D., Gaikwad, S. S., Gilbee, A., Goyal, S., Ballav, A., Majeti, D., Chhibber, N., Richmond-Fuller, A., Vargus, F., Sharma, T. S., Chandrakanthan, V., Moura, T., Salih, M. H., Kalejaiye, G. B. T., Ginzberg, A., Mullings, C. A., Dayan, Y., Milland, K., Orefice, H., Regino, J., Parsi, S., Mainali, K., Sehgal, V., Matin, S., Sinha, A., Vaish, R. and Bernstein, M. S. 2017. Crowd guilds: Worker-led reputation and feedback on crowdsourcing platforms. in: CSCW '17: Proceedings of the 2017 ACM Conference on Computer Supported Cooperative Work and Social Computing New York Association for Computing Machinery. pp. 1902-1913
AuthorsWhiting, M . E., Gamage, D., Gaikwad, S. S., Gilbee, A., Goyal, S., Ballav, A., Majeti, D., Chhibber, N., Richmond-Fuller, A., Vargus, F., Sharma, T. S., Chandrakanthan, V., Moura, T., Salih, M. H., Kalejaiye, G. B. T., Ginzberg, A., Mullings, C. A., Dayan, Y., Milland, K., Orefice, H., Regino, J., Parsi, S., Mainali, K., Sehgal, V., Matin, S., Sinha, A., Vaish, R. and Bernstein, M. S.
Abstract

Crowd workers are distributed and decentralized. While decentralization is designed to utilize independent judgment to promote high-quality results, it paradoxically undercuts behaviors and institutions that are critical to high-quality work. Reputation is one central example: crowdsourcing systems depend on reputation scores from decentralized workers and requesters, but these scores are notoriously inflated and uninformative. In this paper, we draw inspiration from historical worker guilds (e.g., in the silk trade) to design and implement crowd guilds: centralized groups of crowd workers who collectively certify each other’s quality through double-blind peer assessment. A two-week field experiment compared crowd guilds to a traditional decentralized crowd work model. Crowd guilds produced reputation signals more strongly correlated with ground-truth worker quality than signals available on current crowd working platforms, and more accurate than in the traditional model.

KeywordsCrowdsourcing platforms; Human computation
Page range1902-1913
Year2017
Book titleCSCW '17: Proceedings of the 2017 ACM Conference on Computer Supported Cooperative Work and Social Computing
PublisherAssociation for Computing Machinery
Output statusPublished
File
Place of publicationNew York
ISBN9781450343350
Publication dates
Online25 Feb 2017
Publication process dates
Deposited16 Nov 2020
Digital Object Identifier (DOI)https://doi.org/10.1145/2998181.2998234
Official URLhttp://doi.org/10.1145/2998181.2998234
Related URLhttp://cscw.acm.org/2017/program/program_content/Proceedings.html
http://crowdresearch.stanford.edu/
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Stanford Crowd Research Collective: daemo@cs.stanford.edu

EventThe 20th ACM Conference on Computer-Supported Cooperative Work and Social Computing (CSCW 2017)
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