Abstract:
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Evaluation of students' performance is an outstanding problem for Massive Open Online Courses (MOOCs). To assess the huge number of students, many courses adopt peer assessment. The tuned model is a widely used probabilistic model to adjust peer assessment scores for the grading bias and precision of students; however, its model identifiability has been poorly studied. Only when a peer assessment scheme produces an identifiable model can the tuned model recover the true score for each homework submission. In this study, we provide the sufficient and necessary identifiability conditions for the tuned model by constructing a shared grading graph and propose a breadth-first search algorithm to quickly determine the validity of a given peer assessment scheme. Moreover, because of the low completion rates, even when the peer assessment scheme assigned by the instructor ensures model identifiability, the realized scheme by the students may not be valid. We thus provide a dynamic programming algorithm to calculate the probability of realizing a valid peer assessment scheme for a given completion rate and class size. Our proposed algorithm can also answer how to remedy an invalid scheme.
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