Publication | Open Access
Incentives for Effort in Crowdsourcing Using the Peer Truth Serum
100
Citations
29
References
2016
Year
EngineeringSocial InfluenceCommunicationWebsite ContentJournalismComputational Social ScienceData ScienceBiasExperimental EconomicsPeer ConsistencyHuman ComputationPeer Truth SerumMechanism DesignComputer ScienceCrowdsourcingCrowdfundingCrowd ComputingIncentive MechanismSocial ComputingReputation SystemArtsPeer GradingPersuasion
Crowdsourcing is widely proposed as a method to solve a large variety of judgment tasks, such as classifying website content, peer grading in online courses, or collecting real-world data. As the data reported by workers cannot be verified, there is a tendency to report random data without actually solving the task. This can be countered by making the reward for an answer depend on its consistency with answers given by other workers, an approach called peer consistency . However, it is obvious that the best strategy in such schemes is for all workers to report the same answer without solving the task. Dasgupta and Ghosh [2013] show that, in some cases, exerting high effort can be encouraged in the highest-paying equilibrium. In this article, we present a general mechanism that implements this idea and is applicable to most crowdsourcing settings. Furthermore, we experimentally test the novel mechanism, and validate its theoretical properties.
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