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首页> 外文期刊>Operations Research: The Journal of the Operations Research Society of America >Budget-Optimal Task Allocation for Reliable Crowdsourcing Systems
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Budget-Optimal Task Allocation for Reliable Crowdsourcing Systems

机译:可靠的众包系统的预算优化任务分配

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摘要

Crowdsourcing systems, in which numerous tasks are electronically distributed to numerous "information pieceworkers," have emerged as an effective paradigm for human-powered solving of large-scale problems in domains such as image classification, data entry, optical character recognition, recommendation, and proofreading. Because these low-paid workers can be unreliable, nearly all such systems must devise schemes to increase confidence in their answers, typically by assigning each task multiple times and combining the answers in an appropriate manner, e.g., majority voting. In this paper, we consider a general model of such crowdsourcing tasks and pose the problem of minimizing the total price (i.e., number of task assignments) that must be paid to achieve a target overall reliability. We give a new algorithm for deciding which tasks to assign to which workers and for inferring correct answers from the workers' answers. We show that our algorithm, inspired by belief propagation and low-rank matrix approximation, significantly outperforms majority voting and, in fact, is optimal through comparison to an oracle that knows the reliability of every worker. Further, we compare our approach with a more general class of algorithms that can dynamically assign tasks. By adaptively deciding which questions to ask to the next set of arriving workers, one might hope to reduce uncertainty more efficiently. We show that, perhaps surprisingly, the minimum price necessary to achieve a target reliability scales in the same manner under both adaptive and nonadaptive scenarios. Hence, our nonadaptive approach is order optimal under both scenarios. This strongly relies on the fact that workers are fleeting and cannot be exploited. Therefore, architecturally, our results suggest that building a reliable worker-reputation system is essential to fully harnessing the potential of adaptive designs.
机译:众包系统中,将许多任务以电子方式分发给众多“信息工作人员”,已成为人力解决诸如图像分类,数据输入,光学字符识别,推荐和推荐等领域中的大规模问题的有效范例。校对。由于这些低薪工人可能不可靠,因此,几乎所有此类系统都必须制定计划以提高对答案的信心,通常是通过多次分配每个任务并以适当的方式(例如多数投票)组合答案。在本文中,我们考虑了此类众包任务的通用模型,并提出了将实现目标总体可靠性所需支付的总价格(即任务分配数量)降至最低的问题。我们提供了一种新算法,用于确定将哪些任务分配给哪些工人,并从工人的答案中推断出正确的答案。我们表明,受信念传播和低秩矩阵近似启发,我们的算法明显优于多数投票,并且实际上,通过与了解每个工人可靠性的预言相比较,该算法是最优的。此外,我们将我们的方法与可以动态分配任务的更通用的算法类别进行比较。通过自适应地决定向下一组到达的工人提出哪些问题,人们可能希望更有效地减少不确定性。我们显示出令人惊讶的是,在自适应和非自适应方案下,以相同的方式实现目标可靠性所需的最低价格。因此,我们的非自适应方法在两种情况下都是最优的。这在很大程度上依赖于这样一个事实,即工人流浪并且无法被剥削。因此,从结构上讲,我们的结果表明,建立可靠的工人声誉系统对于充分利用自适应设计的潜力至关重要。

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