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Named Entity Recognition Based on A Machine Learning Model

机译:基于机器学习模型的命名实体识别

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摘要

For the recruitment information in Web pages, a novel unified model for named entity recognition is proposed in this study. The models provide a simple statistical framework to incorporate a wide variety of linguistic knowledge and statistical models in a unified way. In our approach, firstly, Multi-Rules are built for a better representation of the named entity, in order to emphasize the specific semantics and term space in the named entity. Then an optimal algorithm of the hierarchically structured DSTCRFs is performed, in order to pick out the structure attributes of the named entity from the recruitment knowledge and optimize the efficiency of the training. The experimental results showed that the accuracy rate has been significantly improved and the complexity of sample training has been decreased.
机译:对于网页中的招聘信息,本研究提出了一种新颖的命名实体识别统一模型。这些模型提供了一个简单的统计框架,可以以统一的方式合并各种语言知识和统计模型。在我们的方法中,首先,建立多规则以更好地表示命名实体,以便强调命名实体中的特定语义和术语空间。然后,对分层结构的DSTCRFs进行优化算法,以从招聘知识中挑选出命名实体的结构属性,并优化训练效率。实验结果表明,准确率得到了显着提高,样本训练的复杂性降低了。

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