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Towards Globally Optimal Crowdsourcing Quality Management: The Uniform Worker Setting

机译:迈向全球最佳众包质量管理:统一的员工环境

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摘要

We study crowdsourcing quality management, that is, given worker responses to a set of tasks, our goal is to jointly estimate the true answers for the tasks, as well as the quality of the workers. Prior work on this problem relies primarily on applying Expectation-Maximization (EM) on the underlying maximum likelihood problem to estimate true answers as well as worker quality. Unfortunately, EM only provides a locally optimal solution rather than a globally optimal one. Other solutions to the problem (that do not leverage EM) fail to provide global optimality guarantees as well.In this paper, we focus on filtering, where tasks require the evaluation of a yeso predicate, and rating, where tasks elicit integer scores from a finite domain. We design algorithms for finding the global optimal estimates of correct task answers and worker quality for the underlying maximum likelihood problem, and characterize the complexity of these algorithms. Our algorithms conceptually consider all mappings from tasks to true answers (typically a very large number), leveraging two key ideas to reduce, by several orders of magnitude, the number of mappings under consideration, while preserving optimality. We also demonstrate that these algorithms often find more accurate estimates than EM-based algorithms. This paper makes an important contribution towards understanding the inherent complexity of globally optimal crowdsourcing quality management.
机译:我们研究众包质量管理,也就是说,给定工人对一系列任务的反应,我们的目标是共同评估任务的真实答案以及工人的素质。对此问题的先前工作主要依赖于对潜在的最大似然问题应用最大期望值(EM)来估计真实答案以及工人素质。不幸的是,EM仅提供了局部最优的解决方案,而不是全局最优的解决方案。该问题的其他解决方案(不利用EM)也无法提供全局最优性保证。本文重点研究过滤(任务需要评估是/否谓词)和评级(任务导致整数得分)。来自有限域我们设计算法以找到潜在最大可能性问题的正确任务答案和工人质量的全局最优估计,并描述这些算法的复杂性。我们的算法从概念上考虑了从任务到真实答案的所有映射(通常是很大的数量),利用两个关键思想将考虑中的映射数量减少了几个数量级,同时又保持了最优​​性。我们还证明,与基于EM的算法相比,这些算法通常可以找到更准确的估算值。本文对理解全球最佳众包质量管理的内在复杂性做出了重要贡献。

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