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Learning to Aggregate Ordinal Labels by Maximizing Separating Width

机译:学习通过最大化分隔宽度来聚合序号标签

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While crowdsourcing has been a cost and time efficient method to label massive samples, one critical issue is quality control, for which the key challenge is to infer the ground truth from noisy or even adversarial data by various users. A large class of crowdsourcing problems, such as those involving age, grade, level, or stage, have an ordinal structure in their labels. Based on a technique of sampling estimated label from the posterior distribution, we define a novel separating width among the labeled observations to characterize the quality of sampled labels, and develop an efficient algorithm to optimize it through solving multiple linear decision boundaries and adjusting prior distributions. Our algorithm is empirically evaluated on several real world datasets, and demonstrates its supremacy over state-of-the-art methods.
机译:尽管众包是标记大量样品的一种省时,省钱的方法,但关键的问题是质量控制,对此关键的挑战是从各种用户的嘈杂甚至对抗性数据中推断出真实情况。一大批众包问题,例如涉及年龄,等级,级别或阶段的众包问题,其标签中都有序结构。基于从后验分布中对估计标签进行采样的技术,我们在标记的观测值之间定义了一种新颖的分隔宽度,以表征采样标签的质量,并开发了一种有效的算法,可以通过求解多个线性决策边界并调整先验分布来对其进行优化。我们的算法在几个现实世界的数据集上进行了经验评估,并证明了其优于最新方法的优越性。

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