151. Auto Generation of Diagnostic Assessments and Their Quality Evaluation
- Author
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Dhavala, Soma, Bhatia, Chirag, Bose, Joy, Faldu, Keyur, and Avasthi, Aditi
- Abstract
A good diagnostic assessment is one that can (i) discriminate between students of different abilities for a given skill set, (ii) be consistent with ground truth data and (iii) achieve this with as few assessment questions as possible. In this paper, we explore a method to meet these objectives. This is achieved by selecting questions from a question database and assembling them to create a diagnostic test paper according to a given configurable policy. We consider policies based on multiple attributes of the questions such as discrimination ability and behavioral parameters, as well as a baseline policy. We develop metrics to evaluate the policies and perform the evaluation using historical student attempt data on assessments conducted on an online learning platform, as well as on a pilot test on the platform administered to a subset of users. We are able to estimate student abilities 40% better with a diagnostic test as compared to baseline policy, with questions derived from a larger dataset. Further, empirical data from a pilot gave an 18% higher spread, denoting better discrimination, for our diagnostic test compared to the baseline test. [For the full proceedings, see ED607784.]
- Published
- 2020