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A Hybrid Approach for Chinese Named Entity Recognition in Music Domain

机译:一种音乐领域中文命名实体识别的混合方法

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The amount of music information available on the Web is rapidly increasing. There is a pressing need for music information extraction. To extract useful information from natural language text, we must recognize music named entities first. This paper introduces a hybrid method to identify the Chinese named entities in music domain. Recently, machine learning approaches are frequently used to solve Name Entity Recognition (NER). So our method uses a Hidden Markov Model (HMM) as the underlying method. Since HMM has innate weaknesses, we incorporate it with rule-based method for pre-processing and post-processing. The combination of machine learning method and rule-based method results in a high precision recognition. And we improve both training and recognizing process of HMM for Music Named Entity Recognition (MNER). In this paper, a novel and convenient Musical Name Entity (MNE) tagging method to generate training data is proposed, which makes HMM method practically usable. In addition, we present an effective method of unknown words tagging in recognition. The experimental results show that our framework brings significant improvements for solving MNER.
机译:Web上可用的音乐信息量正在迅速增加。迫切需要音乐信息提取。要从自然语言文本中提取有用的信息,我们必须首先识别音乐命名实体。本文介绍了一种在音乐领域识别中文命名实体的混合方法。最近,机器学习方法经常用于解决名称实体识别(NER)。因此,我们的方法使用隐马尔可夫模型(HMM)作为基础方法。由于HMM具有先天的弱点,因此我们将其与基于规则的方法进行预处理和后处理。机器学习方法和基于规则的方法的结合导致了高精度的识别。并且我们改进了HMM的音乐命名实体识别(MNER)的训练和识别过程。本文提出了一种新颖,方便的音乐名称实体(MNE)标记方法来生成训练数据,这使得HMM方法具有实用性。此外,我们提出了一种有效的识别未知单词标签的方法。实验结果表明,我们的框架为解决MNER带来了重大改进。

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