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Reliable Multiple-choice Iterative Algorithm for Crowdsourcing Systems

机译:众包系统的可靠多选迭代算法

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摘要

The appearance of web-based crowdsourcing systems gives a promising solution to exploiting the wisdom of crowds efficiently in a short time with a relatively low budget. Despite their efficiency, crowdsourcing systems have an inherent problem in that responses from workers can be unreliable since workers are low-paid and have low responsibility. Although simple majority voting can be a solution, various research studies have sought to aggregate noisy responses to obtain greater reliability in results through effective techniques such as Expectation-Maximization (EM) based algorithms. While EM-based algorithms get the limelight in crowdsourcing systems due to their useful inference techniques, Karger et al. made a significant breakthrough by proposing a novel iterative algorithm based on the idea of low-rank matrix approximations and the message passing technique. They showed that the performance of their iterative algorithm is order-optimal, which outperforms majority voting and EM-based algorithms. However, their algorithm is not always applicable in practice since it can only be applied to binary-choice questions. Recently, they devised an inference algorithm for multi-class labeling, which splits each task into a bunch of binary-choice questions and exploits their existing algorithm. However, it has difficulty in combining into real crowdsourcing systems since it over-exploits redundancy in that each split question should be queried in multiple times to obtain reliable results. In this paper, we design an iterative algorithm to infer true answers for multiple-choice questions, which can be directly applied to real crowdsourcing systems. Our algorithm can also be applicable to short-answer questions as well. We analyze the performance of our algorithm, and prove that the error bound decays exponentially. Through extensive experiments, we verify that our algorithm outperforms majority voting and EM-based algorithm in accuracy.
机译:基于网络的众包系统的出现提供了一种有前途的解决方案,可以在较短的时间内以相对较低的预算有效地利用人群的智慧。尽管众包系统效率高,但它存在一个固有的问题,因为工人的薪水低且责任低,因此工人的响应可能不可靠。尽管简单的多数表决可以解决问题,但各种研究都试图通过有效技术(例如基于期望最大化(EM)的算法)来汇总嘈杂的响应,从而在结果中获得更高的可靠性。尽管基于EM的算法因其有用的推理技术而在众包系统中备受关注,但Karger等人却认为。通过提出一种基于低秩矩阵近似和消息传递技术的新颖迭代算法,取得了重大突破。他们表明,其迭代算法的性能是最优的,优于多数投票和基于EM的算法。但是,它们的算法并不总是在实践中适用,因为它只能应用于二选题。最近,他们设计了一种用于多类标记的推理算法,该算法将每个任务分解为一堆二进制选择问题,并利用其现有算法。但是,由于过度利用了冗余,因此很难合并到实际的众包系统中,因为每个拆分问题都应多次查询以获得可靠的结果。在本文中,我们设计了一种迭代算法来推断多项选择题的真实答案,该算法可以直接应用于实际的众包系统。我们的算法也可以适用于简短回答问题。我们分析了算法的性能,并证明了误差范围呈指数衰减。通过广泛的实验,我们验证了我们的算法在准确性上优于多数投票和基于EM的算法。

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