TY - CONF ID - SisLab3471 UR - https://link.springer.com/chapter/10.1007%2F978-3-030-14799-0_8 A1 - Nguyen, Ngoc Vu A1 - Nguyen, Thi Lan A1 - Nguyen, Thi Cam Van A1 - Tran, Mai Vu A1 - Ha, Quang Thuy Y1 - 2019/04/08/ N2 - Lifelong Machine Learning (LML) is a continuous learning process, in which the knowledge learned from previous tasks is accumulated in the knowledge base, then the knowledge will be used to support future learning tasks, for which it may be only a few of samples exists. However, there is a little of studies on LML based on deep neural networks for Named Entity Recognition (NER), especial in Vietnamese. We propose DeepLML-NER model, a lifelong learning model based on using deep learning methods with a CRFs layer, for NER in Vietnamese text. DeepLML-NER includes an algorithm to extract the knowledge of ?prefix-features? of Named Entities in previous domains. Then the model uses the knowledge stored in the knowledge base to solve a new NER task. The effect of the model was demonstrated by in-domain and cross-domain experiments, achieving promising results. TI - A Character-Level Deep Lifelong Learning Model for Named Entity Recognition in Vietnamese Text SP - 90 M2 - Yogyakarta, Indonesia AV - none EP - 102 T2 - ACIIDS 2019: Intelligent Information and Database Systems ER -