University of Wollongong
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Deep-Cross-Attention Recommendation Model for Knowledge Sharing Micro Learning Service

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posted on 2024-11-15, 03:27 authored by Jiayin Lin, Geng Sun, Jun ShenJun Shen, David Pritchard, Tingru Cui, Dongming Xu, Li Li, Ghassan BeydounGhassan Beydoun, Shiping Chen
Aims to provide flexible, effective and personalized online learning service, micro learning has gained wide attention in recent years as more people turn to use fragment time to grasp fragmented knowledge. Widely available online knowledge sharing is one of the most representative approaches to micro learning, and it is well accepted by online learners. However, information overload challenges such personalized online learning services. In this paper, we propose a deep cross attention recommendation model to provide online users with personalized resources based on users’ profile and historical online behaviours. This model benefits from the deep neural network, feature crossing, and attention mechanism mutually. The experiment result showed that the proposed model outperformed the state-of-the-art baselines.

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Citation

Lin, J., Sun, G., Shen, J., Pritchard, D., Cui, T., Xu, D., Li, L., Beydoun, G. & Chen, S. (2020). Deep-Cross-Attention Recommendation Model for Knowledge Sharing Micro Learning Service. Lecture notes in computer science, 12164 168-173. International Conference on Artificial Intelligence in Education

Journal title

Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)

Volume

12164 LNAI

Pagination

168-173

Language

English

RIS ID

141018

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