Font Size: a A A

Corpus-based methods for the unsupervised grading of short answer questions

Posted on:2016-07-05Degree:M.SType:Thesis
University:San Diego State UniversityCandidate:Proffitt, Eric ShaunFull Text:PDF
GTID:2478390017478440Subject:Statistics
Abstract/Summary:
Information retrieval (IR) approaches to semantic relevancy indexing can be extended from the traditional query-document paradigm to the question-answer paradigm within the context of automatic grading. The focus of this paper is to evaluate the success of unsupervised corpus-based approaches to short answer automatic grading IR, applied the corpus of student responses1 themselves. We illustrate our methods on two datasets, the first a dataset of 270 answers to a quiz question asked in a first semester calculus class at San Diego State University2, and the second a dataset of 29 answers to a quiz question asked in an introductory computer science class at the University of North Texas.
Keywords/Search Tags:Grading
Related items