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Adapting deep belief nets to Chinese entity detection

机译:将深层信念网应用于中国实体检测

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摘要

This paper adapts deep belief networks (DBN) to detect entity mentions in Chinese documents. Our results exhibit how the depth of architecture and quantity of unit in hidden layer influence the performance. Different feature combinations are used to show their advantages and disadvantages in DBN for this task. Moreover, we combined Chinese word segmentation systems to alleviate word segmentation error. Token labels are produced independently by DBN which does not concerned what are the token labels before current word. Viterbi algorithm is a good solution to find the most likely probability label path to make DBN be more effective for entity detection. Furthermore, this paper demonstrates DBN is a proper model for our tasks and its results are better than Support Vector Machine (SVM), Artificial Neural Network (ANN) and Conditional Random Field (CRF).
机译:本文采用深度信念网络(DBN)来检测中文文档中的实体提及。我们的结果表明,架构的深度和隐藏层中的单元数量如何影响性能。在此任务中,使用不同的功能组合来显示其在DBN中的优缺点。此外,我们结合了中文分词系统来减轻分词错误。令牌标签由DBN独立产生,该DBN不关心当前单词之前的令牌标签是什么。维特比算法是找到最可能的概率标签路径以使DBN对实体检测更有效的一种很好的解决方案。此外,本文证明了DBN是适合我们任务的模型,其结果优于支持向量机(SVM),人工神经网络(ANN)和条件随机场(CRF)。

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