使用CRF和简单数据掩蔽技术的泰文文档命名实体识别

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引用次数: 0

摘要

我们在外部字典的帮助下,使用简单的数据屏蔽技术检查了泰国政府项目文档中组织的命名实体识别(NER)。我们的框架展示了它在外部字典不完整的情况下的潜力,并且可能无法用于详尽地标记训练数据。在组织名称的管理区域部分采用数据屏蔽技术,试图发现字典之外的更多组织实体。实验结果表明,我们的模型在牺牲相对较小的精度的情况下获得了更高的召回率。该方法还能够识别字典中从未出现过的实体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Named Entity Recognition of Thai Documents using CRF with a Simple Data Masking Technique
We examined the Named Entity Recognition (NER) of organizations in the Thai government’s project documents using a simple data masking technique with the help of an external dictionary. Our framework demonstrated its potential in the case that the external dictionary was incomplete and might not be used to label the training data exhaustively. A data masking technique on the administrative area part of the organization names was employed in an attempt to discover more organization entities outside the dictionary. The experimental results showed that our model gained higher recall while sacrificing a relatively small amount of precision. The proposed approach was also capable of recognizing entities which were never seen in the dictionary.
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