TWLR:一种基于工作者表示的低冗余众包真值推理方法

Qianli Xing, Weiliang Zhao, Jian Yang, Jia Wu, Qi Wang
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引用次数: 1

摘要

基于冗余的策略被广泛采用,通过将每个任务分配给多个工人,然后在众包中推断每个任务的正确答案(称为真理)。大多数现有的真值推理方法都是为每个任务有相当多的答案(称为高冗余)的情况而设计的。然而,高冗余不可避免地导致了高成本。在这项工作中,我们提出了一种新的真理推理方法,称为TWLR,该方法基于每个任务的答案数量较少(称为低冗余)的工人表示。我们开发了一个深度模型来学习考虑答案和工人-任务关系的工人的表征。对于每一项任务,我们都会识别出质量最高的工人,并选择他/她的答案作为预测答案。据我们所知,这是第一个通过利用深度学习技术来处理众包中低冗余情况来执行真理推理的工作。我们针对7个真实世界的数据集进行了一组实验,通过与11种基线方法进行比较,我们的真值推理方法的准确性得到了提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TWLR: A Novel Truth Inference Approach based on Worker Representations for Crowdsourcing in the Low Redundancy Situation
A redundancy-based strategy is widely employed by assigning each task to multiple workers and then inferring the correct answer (called truth) for each task in crowdsourcing. Most existing truth inference methods are designed for the situation with a fairly big number of answers for each task (referred to as high redundancy). However, the high redundancy unavoidably leads to a high cost. In this work, we propose a novel truth inference approach called TWLR based on worker representations for the situation with a small number of answers for each task (referred to as low redundancy). We develop a deep model to learn the representations of workers considering both answers and worker-task relations. For each task, we identify the worker with the highest quality, and select his/her answer as the predicted answer. To the best of our knowledge, this is the first work to perform truth inference by utilizing deep learning techniques to deal with the low redundancy situation in crowdsourcing. We have conducted a set of experiments against 7 real-world datasets to show the accuracy improvement of our truth inference approach by comparing with 11 baseline methods.
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