Title
Bayesian Ordinal Peer Grading
Abstract
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.
Year
DOI
Venue
2015
10.1145/2724660.2724678
L@S
Keywords
Field
DocType
miscellaneous,ordinal feedback,peer grading,rank aggregation
Markov chain Monte Carlo,Grading (education),Ranking,Computer science,Ordinal number,Artificial intelligence,Sampling (statistics),Machine learning,Bayesian probability
Conference
Citations 
PageRank 
References 
15
0.91
12
Authors
2
Name
Order
Citations
PageRank
Karthik Raman130923.74
Thorsten Joachims2173871254.06