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Deep Sequence Labelling Model for Information Extraction in Micro Learning Service

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conference contribution
posted on 2024-11-13, 20:36 authored by Jiayin Lin, Zhexuan Zhou, Geng Sun, Jun ShenJun Shen, David Pritchard, Tingru Cui, Dongming Xu, Li Li, Ghassan BeydounGhassan Beydoun
Micro learning aims to assist users in making good use of smaller chunks of spare time and provides an effective online learning service. However, to provide such personalized online services on the Web, a number of information overload challenges persist. Effectively and precisely mining and extracting valuable information from massive and redundant information is a significant preprocessing procedure for personalizing online services. In this study, we propose a deep sequence labelling model for locating, extracting, and classifying key information for micro learning services. The proposed model is general and combines the advantages of different types of classical neural network. Early evidence shows that it has satisfactory performance compared to conventional information extraction methods such as conditional random field and bi-directional recurrent neural network, for micro learning services.

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Citation

Lin, J., Zhou, Z., Sun, G., Shen, J., Pritchard, D., Cui, T., Xu, D., Li, L. & Beydoun, G. (2020). Deep Sequence Labelling Model for Information Extraction in Micro Learning Service. IEEE International Joint Conference on Neural Networks (pp. 1-10). United States: IEEE.

Parent title

Proceedings of the International Joint Conference on Neural Networks

Language

English

RIS ID

139321

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