复杂作业自动评分的探索

Chase Geigle, ChengXiang Zhai, D. Ferguson
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引用次数: 23

摘要

自动评分对于扩大学习规模至关重要。在本文中,我们首次系统地研究了如何使用医疗案例评估作为测试案例来自动评分复杂作业。我们建议使用监督学习方法来解决这个问题,并介绍了三种用于监督学习的复杂任务的一般互补类型的特征表示。我们首先通过实证实验证明,如果教师可以对一些例子进行评分,那么自动评分是可行的。我们进一步研究了如何将自动评分器与人工评分相结合,并提出将问题框架为学习对作业进行排名,以利用成对偏好判断,并使用NDPM作为评估排名准确性的度量。然后,我们提出了一种顺序两两在线主动学习策略,以最大限度地减少人工评分的工作量,并优化人工评分者和自动评分者的协作。实验结果表明,该策略确实有效,与随机抽样分配进行人工评分相比,可以大大减少人工工作量。
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An Exploration of Automated Grading of Complex Assignments
Automated grading is essential for scaling up learning. In this paper, we conduct the first systematic study of how to automate grading of a complex assignment using a medical case assessment as a test case. We propose to solve this problem using a supervised learning approach and introduce three general complementary types of feature representations of such complex assignments for use in supervised learning. We first show with empirical experiments that it is feasible to automate grading of such assignments provided that the instructor can grade a number of examples. We further study how to integrate an automated grader with human grading and propose to frame the problem as learning to rank assignments to exploit pairwise preference judgments and use NDPM as a measure for evaluation of the accuracy of ranking. We then propose a sequential pairwise online active learning strategy to minimize the effort of human grading and optimize the collaboration of human graders and an automated grader. Experiment results show that this strategy is indeed effective and can substantially reduce human effort as compared with randomly sampling assignments for manual grading.
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