贝叶斯有序同伴分级

Karthik Raman, T. Joachims
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引用次数: 34

摘要

大规模在线开放课程已经成为一种方便且负担得起的教育选择。这给教师带来了新的技术挑战,比如大规模的学生评估。最近的研究发现,将单个评分者的排序汇总成作业的总体排序,是传统教师/员工评估的可行替代方法[23]。现有的技术扩展了排名聚合方法,产生一个单一的排序作为输出。虽然这些排名被认为是对作业质量的平均准确反映,但它们并没有传达评估过程中固有的任何不确定性。特别是,它们不会向教师提供每个作业在排名中位置的不确定性估计。在这项工作中,我们通过将基于mcmc的采样技术与Mallows模型相结合,将贝叶斯技术应用于有序同伴分级问题来解决这个问题。实验结果表明,该方法通过估计的后验分布提供了准确的不确定性信息。
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Bayesian Ordinal Peer Grading
Massive Online Open Courses have become an accessible and affordable choice for education. This has led to new technical challenges for instructors such as student evaluation at scale. Recent work has found ordinal peer grading}, where individual grader orderings are aggregated into an overall ordering of assignments, to be a viable alternate to traditional instructor/staff evaluation [23]. Existing techniques, which extend rank-aggregation methods, produce a single ordering as output. While these rankings have been found to be an accurate reflection of assignment quality on average, they do not communicate any of the uncertainty inherent in the assessment process. In particular, they do not to provide instructors with an estimate of the uncertainty of each assignment's position in the ranking. In this work, we tackle this problem by applying Bayesian techniques to the ordinal peer grading problem, using MCMC-based sampling techniques in conjunction with the Mallows model. Experiments are performed on real-world peer grading datasets, which demonstrate that the proposed method provides accurate uncertainty information via the estimated posterior distributions.
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