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Task Selection for Bandit-Based Task Assignment in Heterogeneous Crowdsourcing

机译:异构众包中基于强盗的任务分配的任务选择

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摘要

Task selection (picking an appropriate labeling task) and worker selection (assigning the labeling task to a suitable worker) are two major challenges in task assignment for crowdsourcing. Recently, worker selection has been successfully addressed by the bandit-based task assignment (BBTA) method, while task selection has not been thoroughly investigated yet. In this paper, we experimentally compare several task selection strategies borrowed from active learning literature, and show that the least confidence strategy significantly improves the performance of task assignment in crowdsourcing.
机译:任务选择(选择合适的标签任务)和工人选择(将标签任务分配给合适的工人)是众包任务分配中的两个主要挑战。最近,通过基于强盗的任务分配(BBTA)方法成功解决了工人选择问题,而尚未对任务选择进行彻底研究。在本文中,我们通过实验比较了主动学习文献中的几种任务选择策略,并表明最小置信度策略可显着提高众包中任务分配的绩效。

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