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Improving Named Entity Recognition in Vietnamese Texts by a Character-Level Deep Lifelong Learning Model

机译:通过角色级深终身学习模型改善越南文本中的命名实体识别

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摘要

Named entity recognition (NER) is a fundamental task which affects the performance of its dependent task, e.g. machine translation. Lifelong machine learning (LML) is a continuous learning process, in which the knowledge base accumulated from previous tasks will be used to improve future learning tasks having few samples. Since there are a few studies on LML based on deep neural networks for NER, especially in Vietnamese, we propose a lifelong learning model based on deep learning with a CRFs layer, named DeepLML–NER, for NER in Vietnamese texts. DeepLML–NER includes an algorithm to extract the knowledge of “prefix-features” of named entities in previous domains. Then the model uses the knowledge in the knowledge base to solve the current NER task. Preprocessing and model parameter tuning are also investigated to improve the performance. The effect of the model was demonstrated by in-domain and cross-domain experiments, achieving promising results.
机译:命名实体识别(ner)是一个基本任务,影响其依赖任务的性能,例如,机器翻译。终身机器学习(LML)是一个连续学习过程,其中从先前任务中累积的知识库将用于改善具有少量样品的未来学习任务。由于基于NER的深神经网络的LML有一些研究,特别是在越南语中,我们提出了一种基于深入学习的终身学习模型,与DEEPLM-NER命名的CRFS层,在越南文本中。 deeplml-ner包括提取以前域中命名实体的“前缀特征”的知识的算法。然后该模型使用知识库中的知识来解决当前的NER任务。还研究了预处理和模型参数调整以提高性能。通过域和跨域实验证明了模型的效果,实现了有希望的结果。

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