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"ERIC ED637012: Predicting Question Quality Using Recurrent Neural Networks" and the language of the book is English.


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  • Title: ➤  ERIC ED637012: Predicting Question Quality Using Recurrent Neural Networks
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  • Language: English

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This study assesses the extent to which machine learning techniques can be used to predict question quality. An algorithm based on textual complexity indices was previously developed to assess question quality to provide feedback on questions generated by students within iSTART (an intelligent tutoring system that teaches reading strategies). In this study, 4,575 questions were coded by human raters based on their corresponding depth, classifying questions into four categories: 1-very shallow to 4-very deep. Here we propose a novel approach to assessing question quality within this dataset based on Recurrent Neural Networks (RNNs) and word embeddings. The experiments evaluated multiple RNN architectures using GRU, BiGRU and LSTM cell types of different sizes, and different word embeddings (i.e., FastText and Glove). The most precise model achieved a classification accuracy of 81.22%, which surpasses the previous prediction results using lexical sophistication complexity indices (accuracy = 41.6%). These results are promising and have implications for the future development of automated assessment tools within computer-based learning environments. [This is a paper in: Penstein Rosé, C., et al. "Artificial Intelligence in Education." AIED 2018. Lecture Notes in Computer Science(), vol 10947. Springer, Cham.]

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