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Optimal Spot-Checking for Improving the Evaluation Quality of Crowdsourcing: Application to Peer Grading Systems

机译:改进众包评估质量的最佳点检查:应用于对等分级系统

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摘要

Peer grading is a natural crowdsourcing application, where dispersed students/peers resources are collected to evaluate others' assignments. Peer grading also offers a promising solution for scaling evaluation and learning to large-scale educational systems. A key challenge in peer grading is motivating peers to grade diligently and provide a high-quality evaluation. Spot-checking (SC) mechanisms, allowing instructors to check evaluations, can prevent peer collusion where peers grade arbitrarily and coordinate to report the uninformative grade. However, existing SC mechanisms unrealistically assume that peers have the same grading reliability and cost. This is limiting in practice, where we would expect peers to differ in reliability and cost. This article proposes the general Optimal SC (OptSC) model of determining the probability that each assignment needs to be checked to maximize assignments' evaluation accuracy aggregated from peers and takes into consideration: 1) peers' heterogeneous characteristics and 2) peers' strategic grading behaviors to maximize their own utility. We prove that the bilevel OptSC is NP-hard to solve. By exploiting peers' grading behaviors, we first formulate a single-level relaxation to approximate OptSC. By further exploiting structural properties of the relaxed problem, we propose an efficient algorithm to that relaxation, which also gives a good approximation of the original OptSC. Extensive experiments on both synthetic and real data sets show significant advantages of the proposed algorithm over existing approaches.
机译:同行评分是一个天生的众包应用程序,其中收集分散的学生/同龄人资源来评估他人的作业。 PEER DECARING还提供了一个有希望的解决方案,用于扩大评估和学习大规模教育系统。同行评分中的一个关键挑战是努力激励同龄人的同龄,并提供高质量的评估。点检查(SC)机制,允许教师检查评估,可以防止对等级分级任意并协调报告未表征等级的同伴勾结。然而,现有的SC机制是不切实际的,即对等体具有相同的分级可靠性和成本。这是在实践中限制,我们希望同行的可靠性和成本不同。本文提出了确定需要检查每个分配的概率的一般最佳SC(OPTSC)模型,以最大限度地从对等体汇总的分配的评估准确性,并考虑到:1)对等体的“异构特征”和2)同龄人的战略分级行为最大化自己的实用程序。我们证明贝塞尔Optsc是NP - 难以解决。通过利用同伴的分级行为,我们首先制定单层放松以近似光学。通过进一步利用缓和问题的结构性,我们提出了一种高效的算法,该余地也给出了原始OPTSC的良好近似。对合成和实数据集的广泛实验显示了所提出的算法在现有方法上的显着优势。

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