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 if the number of (unlabeled) items available is large enough, our algorithms satisfy the prescribed error thresholds, incurring a cost that is near-optimal. Finally,...
To deal with the low qualities of web workers in crowdsourcing, many unsupervised label aggregation ...
Received xxxxxxxx xx, xxxx; accepted xxxxxxxx xx, xxxx Abstract Crowdsourcing has been an effective ...
Abstract—Crowdsourcing provides a cheap but efficient approach for large-scale data and information ...
We propose novel algorithms for the problem of crowd- sourcing binary labels. Such binary labeling t...
Crowdsourcing has become an effective and popular tool for human-powered computation to label large ...
Crowdsourcing systems often have crowd workers that perform unreliable work on the task they are ass...
In this paper we address the problem of budget allocation for redundantly crowdsourcing a set of cla...
Crowdsourcing systems, in which numerous tasks are electronically distributed to numerous “informati...
Crowdsourcing systems, in which tasks are electronically distributed to numerous “information piece-...
Crowdsourcing systems are popular for solving large-scale labeling tasks with low-paid workers. We s...
Crowdsourcing is a computational paradigm whose distinctive feature is the involvement of human work...
Crowdsourcing is the use of human workers, usually through the Internet, for obtaining useful servic...
Crowdsourcing is a way to solve problems that need human contribution. Crowdsourcing platforms distr...
Crowdsourcing label generation has been a crucial component for many real-world ma-chine learning ap...
Abstract—Crowdsourcing systems allocate tasks to a group of workers over the Internet, which have be...
To deal with the low qualities of web workers in crowdsourcing, many unsupervised label aggregation ...
Received xxxxxxxx xx, xxxx; accepted xxxxxxxx xx, xxxx Abstract Crowdsourcing has been an effective ...
Abstract—Crowdsourcing provides a cheap but efficient approach for large-scale data and information ...
We propose novel algorithms for the problem of crowd- sourcing binary labels. Such binary labeling t...
Crowdsourcing has become an effective and popular tool for human-powered computation to label large ...
Crowdsourcing systems often have crowd workers that perform unreliable work on the task they are ass...
In this paper we address the problem of budget allocation for redundantly crowdsourcing a set of cla...
Crowdsourcing systems, in which numerous tasks are electronically distributed to numerous “informati...
Crowdsourcing systems, in which tasks are electronically distributed to numerous “information piece-...
Crowdsourcing systems are popular for solving large-scale labeling tasks with low-paid workers. We s...
Crowdsourcing is a computational paradigm whose distinctive feature is the involvement of human work...
Crowdsourcing is the use of human workers, usually through the Internet, for obtaining useful servic...
Crowdsourcing is a way to solve problems that need human contribution. Crowdsourcing platforms distr...
Crowdsourcing label generation has been a crucial component for many real-world ma-chine learning ap...
Abstract—Crowdsourcing systems allocate tasks to a group of workers over the Internet, which have be...
To deal with the low qualities of web workers in crowdsourcing, many unsupervised label aggregation ...
Received xxxxxxxx xx, xxxx; accepted xxxxxxxx xx, xxxx Abstract Crowdsourcing has been an effective ...
Abstract—Crowdsourcing provides a cheap but efficient approach for large-scale data and information ...