Chinese named entity recognition using modified conditional random field on postal address

Wenqiao Sun
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引用次数: 6

Abstract

Named entity recognition(NER) has been studied for a long time as more and more researches about the embedding, neural network model and some others systems like Language Model have developed quickly. However, as these systems rely heavily on domain-specific knowledge and it can hardly acquires much data about Chinese postal addresses, Chinese Named entity recognition(CNER) task on postal address has developed slowly. In this paper, we use a modified Conditional Random Field(CRF) model to solve a CNER task on a postal address corpus. Since there has little data about Chinese postal addresses and parts of which are incomplete sentences, we utilize the known, useful, clearer semantics words and sentences to our model as the additional features. We make three experiments to evaluate our system which obtains good performance and it shows that our modified algorithm performs better than other traditional algorithms when processing postal addresses.
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基于邮政地址的改进条件随机场的中文命名实体识别
随着嵌入、神经网络模型和语言模型等系统的研究越来越多,命名实体识别(NER)的研究已经进行了很长时间。然而,由于这些系统严重依赖于特定领域的知识,难以获取大量的中文邮政地址数据,因此,针对邮政地址的中文命名实体识别(CNER)任务发展缓慢。在本文中,我们使用一个改进的条件随机场(CRF)模型来解决邮政地址语料库上的CNER任务。由于中国邮政地址的数据很少,而且其中部分是不完整的句子,因此我们使用已知的、有用的、语义更清晰的词和句子作为我们模型的附加特征。通过三次实验对系统进行了评价,取得了良好的性能,表明改进后的算法在处理邮政地址时的性能优于其他传统算法。
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