Deep-IRT: Make Deep Learning Based Knowledge Tracing Explainable Using Item Response Theory
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Chun-Kit Yeung
Deep-IRT: Make Deep Learning Based Knowledge Tracing Explainable Using Item Response Theory
EDM, 2019.

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@inproceedings{EDM-2019-Yeung,
	author        = "Chun-Kit Yeung",
	booktitle     = "{Proceedings of the 12th International Conference on Educational Data Mining}",
	ee            = "https://drive.google.com/file/d/1B_vuJGNgdl7Wxdbh9Lz9nkM_GuxWAfGD",
	publisher     = "{International Educational Data Mining Society}",
	title         = "{Deep-IRT: Make Deep Learning Based Knowledge Tracing Explainable Using Item Response Theory}",
	year          = 2019,
}

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