基于电力用户词典的能源文献中文分词模型

Bochuan Song, Bo Chai, Qiang Zhang, Quanye Jia
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引用次数: 1

摘要

传统的中文分词方法是基于有监督的机器学习,如条件随机场(CRFs)、最大熵(ME)等,其特征多为人工特征。这些手动特性通常来源于本地上下文。目前,最先进的中文分词方法大多是基于神经网络的。然而,这些神经网络很少引入用户字典。提出了一种基于lstm的中文分词方法,该方法可以充分利用用户字典的优势。实验表明,该模型在电领域的性能优于常用的分段工具。注意到,当使用用户字典转移到新域时,它获得了更好的性能。
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A Chinese word segment model for energy literature based on Neural Networks with Electricity User Dictionary
Traditional Chinese word segmentation (CWS) methods are based on supervised machine learning such as Condtional Random Fields(CRFs), Maximum Entropy(ME), whose features are mostly manual features. These manual features are often derived from local contexts. Currently, most state-of-art methods for Chinese word segmentation are based on neural networks. However these neural networks rarely introduct the user dictionary. We propose a LSTMbased Chinese word segmentation which can take advantage of the user dictionary. The experiments show that our model performs better than a popular segment tool in electricity domain. It is noticed that it achieves a better performance when transfered to a new domain using the user dictionary.
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