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Automated Scoring of Self-Explanations Using Recurrent Neural Networks

Authors :
Panaite, Marilena
Ruseti, Stefan
Dascalu, Mihai
Balyan, Renu
McNamara, Danielle S.
Trausan-Matu, Stefan
Source :
Grantee Submission. 2019Paper presented at the European Conference on Technology Enhanced Learning (EC-TEL) (2019).
Publication Year :
2019

Abstract

Intelligence Tutoring Systems (ITSs) focus on promoting knowledge acquisition, while providing relevant feedback during students' practice. Self-explanation practice is an effective method used to help students understand complex texts by leveraging comprehension. Our aim is to introduce a deep learning neural model for automatically scoring student self-explanations that are targeted at specific sentences. The first stage of the processing pipeline performs an initial text cleaning and applies a set of predefined rules established by human experts in order to identify specific cases (e.g., students who do not understand the text, or students who simply copy and paste their self-explanations from the given input text). The second step uses a Recurrent Neural Network with pre-trained Glove word embeddings to predict self-explanation scores on a scale of 1 to 3. In contrast to previous SVM models trained on the same dataset of 4109 self-explanations, we obtain a significant increase of accuracy from 59% to 73%. Moreover, the new pipeline can be integrated in learning scenarios requiring near real-time responses from the ITS, thus addressing a major limitation in terms of processing speed exhibited by the previous approach. [This paper was published in: M. Scheffel et al. (Eds.), "EC-TEL 2019" (pp. 659-663). Switzerland: Springer.]

Details

Language :
English
Database :
ERIC
Journal :
Grantee Submission
Publication Type :
Report
Accession number :
ED603840
Document Type :
Reports - Research<br />Speeches/Meeting Papers
Full Text :
https://doi.org/10.1007/978-3-030-29736-7_61