Abstract
Building an informed crowdsourced workflow can help improve the quality of crowdsourcing results by allowing workers to collaborate and build on each others’ work. This topic has been widely adopted and studied.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Bernstein MS, Little G, Miller RC, Hartmann B, Ackerman MS, Karger DR, Crowell D, Panovich K (2010) Soylent: a word processor with a crowd inside. In: UIST, New York, pp 313–322
Chilton L, Little G, Edge D, Weld DS, Landay JA (2013) Cascade: Crowdsourcing taxonomy creation In: CHI, Paris
Dai P, Lin CH, Mausam, Weld DS (2013) POMDP-based control of workflows for crowdsourcing. Artif Intell 202:52-85
Dai P, Mausam, Weld DS (2010) Decision-theoretic control of crowd-sourced workflows. In: AAAI, Atlanta
Dai P, Mausam, Weld DS (2011) Artificial intelligence for artificial artificial intelligence. In: AAAI, San Francisco
Donmez P, Carbonell JG, Schneider J (2010) A probabilistic framework to learn from multiple annotators with time-varying accuracy. In: SIAM international conference on data mining (SDM), Columbus, pp 826–837
Kulkarni A, Can M, Hartmann B (2012) Collaboratively crowdsourcing workflows with turkomatic. In: Proceedings of CSCW, Seattle
Lasecki WS, Murray KI, White S, Miller RC, Bigham JP (2011) Real-time crowd control of existing interfaces. In: Proceedings of UIST, Santa Barbara
Liem B, Zhang H, Chen Y (2011) An iterative dual pathway structure for speech-to-text transcription. In: HCOMP, San Francisco
Lin CH, Mausam, Weld DS (2012a) Crowdsourcing control: moving beyond multiple choice. In: UAI, Toronto
Lin CH, Mausam, Weld DS (2012b) Dynamically switching between synergistic workflows for crowdsourcing. In: AAAI, Toronto
Little G, Chilton LB, Goldman M, Miller RC (2009) Turkit: tools for iterative tasks on mechanical turk. In: KDD workshop on human computation, Paris, pp 29–30
Little G, Chilton LB, Goldman M, Miller RC (2010) Turkit: human computation algorithms on mechanical turk. In: UIST, New York, pp 57–66
Michelucci PE (2000) A quantum model of recognition. Dissertation, Indiana University
Noronha J, Hysen E, Zhang H, Gajos KZ (2011) Platemate: crowdsourcing nutrition analysis from food photographs. In: UIST, Santa Barbara
Rzeszotarski J, Chi E, Paratosh P, Dai P (2013) And now for something completely different: introducing micro-breaks into crowdsourcing workflows. In: HCOMP WiP track
Zhang H, Law E, Miller R, Gajos K, Parkes DC, Horvitz E (2012) Human computation tasks with global constraints. In: CHI, Austin, pp 217–226
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2013 Springer Science+Business Media New York
About this chapter
Cite this chapter
Dai, P. (2013). Constructing Crowdsourced Workflows. In: Michelucci, P. (eds) Handbook of Human Computation. Springer, New York, NY. https://doi.org/10.1007/978-1-4614-8806-4_49
Download citation
DOI: https://doi.org/10.1007/978-1-4614-8806-4_49
Published:
Publisher Name: Springer, New York, NY
Print ISBN: 978-1-4614-8805-7
Online ISBN: 978-1-4614-8806-4
eBook Packages: Computer ScienceComputer Science (R0)