Unsupervised Crowdsourcing with Accuracy and Cost Guarantees

Yashvardhan Didwania,Jayakrishnan Nair,N. Hemachandra

2022 20th International Symposium on Modeling and Optimization in Mobile, Ad hoc, and Wireless Networks (WiOpt)(2022)

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摘要
We consider the problem of cost-optimal utilization of a crowdsourcing platform for binary, unsupervised classification of a collection of items, given a prescribed error threshold. Workers on the crowdsourcing platform are assumed to be divided into multiple classes, based on their skill, experience, and/or past performance. We model each worker class via an unknown confusion matrix, and a (known) price to be paid per label prediction. For this setting, we propose algorithms for acquiring label predictions from workers, and for inferring the true labels of items. We prove that (i) our algorithms satisfy the prescribed error threshold, and (ii) if the number of (unlabeled) items available is large enough, the algorithms incur a cost that is near-optimal. Finally, we validate our algorithms, and some heuristics inspired by them, through an extensive case study.
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关键词
crowdsourcing platform,binary classification,unsupervised classification,prescribed error threshold,worker class,unknown confusion matrix,label prediction,unsupervised crowdsourcing,cost-optimal utilization
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