ELDP:用于众包的增强标签分发传播

Wenjun Zhang;Liangxiao Jiang;Chaoqun Li
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引用次数: 0

摘要

在众包场景中,我们可以从众包工作者那里获得一个实例的多个噪声标签,然后将这些标签聚合,从而推断出该实例的未知真标签。由于工人缺乏专业知识,获得的标签通常含有一定程度的噪音。现有的研究多集中在低噪声比的众包场景,而很少关注高噪声比的众包场景。本文针对高噪比众包场景,提出了一种新的标签聚合算法——增强标签分布传播(enhanced label distribution propagation, ELDP)。首先,ELDP利用内部工作者加权方法来估计工作者的权重,然后执行第一次标签分布增强。然后,对于第一次增强中没有涉及的实例,ELDP使用基于簇内距离的类隶属度估计方法执行第二次增强。最后,ELDP将增强的标签分布从准确增强的实例传播到不准确增强的实例。在模拟和现实世界众包数据集上的实验结果表明,ELDP显著优于所有其他最先进的标签聚合算法。
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ELDP: Enhanced Label Distribution Propagation for Crowdsourcing
In crowdsourcing scenarios, we can obtain multiple noisy labels for an instance from crowd workers and then aggregate these labels to infer the unknown true label of this instance. Due to the lack of expertise of workers, obtained labels usually contain a degree of noise. Existing studies usually focus on the crowdsourcing scenarios with low noise ratios but rarely focus on the crowdsourcing scenarios with high noise ratios. In this paper, we focus on the crowdsourcing scenarios with high noise ratios and propose a novel label aggregation algorithm called enhanced label distribution propagation (ELDP). First, ELDP harnesses an internal worker weighting method to estimate the weights of workers and then performs the first label distribution enhancement. Then, for instances not covered in the first enhancement, ELDP performs the second enhancement using a class membership estimation method based on the intra-cluster distance. Finally, ELDP propagates enhanced label distributions from accurately enhanced instances to inaccurately enhanced instances. Experimental results on both simulated and real-world crowdsourced datasets show that ELDP significantly outperforms all the other state-of-the-art label aggregation algorithms.
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