Improving Student Forum Responsiveness: Detecting Duplicate Questions in Educational Forums
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Mohania, Manal
zhou, liyuan
Gedeon, Tom
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Springer
Abstract
Student forums are important for student engagement and
learning in university courses but require high staff resources to moderate
and answer questions. In introductory courses, the content can remain
almost unchanged each year, so the questions asked in the course forums
do not see a lot of variety over different iterations, which provides an
opportunity for automation. This paper compiles a dataset of forum
threads and meta-information of the participants from the Web Design
and Development course at the Australian National University for the
purposes of duplicate question detection in educational forums. A state
of the art neural network model is trained on the dataset to measure its
usefulness. An accuracy of 91.8% is achieved, which is on par with what
is achieved on other datasets with similar features. A high performing
neural network for this dataset could potentially be used to create a live
system that detects and reuses answers for duplicate questions on course
forums.
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Communications in Computer and Information Science: Neural Information Processing
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Restricted until
2099-12-31
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