Leveraging Peer Communication to Enhance Crowdsourcing

Wei Tang, Ming Yin, Chien-Ju Ho
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引用次数: 18

Abstract

Crowdsourcing has become a popular tool for large-scale data collection where it is often assumed that crowd workers complete the work independently. In this paper, we relax such independence property and explore the usage of peer communication-a kind of direct interactions between workers-in crowdsourcing. In particular, in the crowdsourcing setting with peer communication, a pair of workers are asked to complete the same task together by first generating their initial answers to the task independently and then freely discussing the task with each other and updating their answers after the discussion. We first experimentally examine the effects of peer communication on individual microtasks. Our results conducted on three types of tasks consistently suggest that work quality is significantly improved in tasks with peer communication compared to tasks where workers complete the work independently. We next explore how to utilize peer communication to optimize the requester's total utility while taking into account higher data correlation and higher cost introduced by peer communication. In particular, we model the requester's online decision problem of whether and when to use peer communication in crowdsourcing as a constrained Markov decision process which maximizes the requester's total utility under budget constraints. Our proposed approach is empirically shown to bring higher total utility compared to baseline approaches.
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利用同业沟通加强众包
众包已经成为一种流行的大规模数据收集工具,通常假设众包工作者独立完成工作。在本文中,我们放宽了这种独立性,并探讨了在众包中使用对等通信——一种工人之间的直接互动。特别是在具有同伴沟通的众包环境中,要求一对工人一起完成同一个任务,首先独立生成任务的初始答案,然后彼此自由地讨论任务,并在讨论后更新他们的答案。我们首先通过实验检验同伴交流对个体微任务的影响。我们对三种类型的任务进行的研究结果一致表明,与员工独立完成工作的任务相比,有同伴沟通的任务的工作质量显著提高。接下来,我们将探讨如何利用对等通信来优化请求者的总效用,同时考虑到对等通信带来的更高的数据相关性和更高的成本。特别是,我们将请求者是否以及何时在众包中使用对等通信的在线决策问题建模为一个约束马尔可夫决策过程,该决策过程在预算约束下最大化请求者的总效用。经验表明,与基线方法相比,我们提出的方法具有更高的总效用。
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