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Optimal Crowdsourced Classification with a Reject Option in the Presence of Spammers (1710.09901v1)
Published 26 Oct 2017 in cs.HC and cs.SI
Abstract: We explore the design of an effective crowdsourcing system for an $M$-ary classification task. Crowd workers complete simple binary microtasks whose results are aggregated to give the final decision. We consider the scenario where the workers have a reject option so that they are allowed to skip microtasks when they are unable to or choose not to respond to binary microtasks. We present an aggregation approach using a weighted majority voting rule, where each worker's response is assigned an optimized weight to maximize crowd's classification performance.
- Qunwei Li (23 papers)
- Pramod K. Varshney (135 papers)