首页> 外文会议>2007 IEEE International Conference on Natural Language Processing and Knowledge Engineering(NLP-KE'07) >Automatic Recognition of Chinese Organization Name Based on Conditional Random Fields
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Automatic Recognition of Chinese Organization Name Based on Conditional Random Fields

机译:基于条件随机域的中文组织名称自动识别

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摘要

Person, location and organization have been always mentioned as a bottleneck of a Named Entity Recognition (NER) system. Automatic recognition of Chinese organization name is the most difficult problem in NER tasks. This paper presents a new approach of Chinese organization name recognition based on cascaded conditional random fields. In the proposed approach, we first recognize the person name and location name before recognizing organization. The model structure has been designed with the cascade way, the result then is passed to the high model and suppose the decision of high model for recognition of the complicated organization names. And we proposed the new feature to realize this task. We evaluate our approach on large-scale corpus with open test method using People’s Daily (January, 1998), Chinese ORG recalling rate achieves 88.78% and the precision rate is 82.35%. The evaluation results show that our approach based on cascaded conditional random fields significantly outperforms previous approaches.
机译:人员,位置和组织一直被视为命名实体识别(NER)系统的瓶颈。在NER任务中,自动识别中文组织名称是最困难的问题。本文提出了一种基于级联条件随机场的中文组织名称识别新方法。在提出的方法中,我们先识别人员名称和位置名称,然后再识别组织。通过级联方式设计模型结构,然后将结果传递给高级模型,并假设高级模型的决策可以识别复杂的组织名称。并且我们提出了新功能来实现这一任务。我们使用《人民日报》(1998年1月),采用开放式测试方法对大型语料库进行了评估,中国ORG的召回率达到88.78%,准确率达到82.35%。评估结果表明,我们基于级联条件随机场的方法明显优于以前的方法。

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