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Neural Networks for Featureless Named Entity Recognition in Czech

机译:捷克语中无特征名为实体识别的神经网络

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We present a completely featureless, language agnostic named entity recognition system. Following recent advances in artificial neural network research, the recognizer employs parametric rectified linear units (PReLU), word embeddings and character-level embeddings based on gated linear units (GRU). Without any feature engineering, only with surface forms, lemmas and tags as input, the network achieves excellent results in Czech NER and surpasses the current state of the art of previously published Czech NER systems, which use manually designed rule-based orthographic classification features. Furthermore, the neural network achieves robust results even when only surface forms are available as input. In addition, the proposed neural network can use the manually designed rule-based orthographic classification features and in such combination, it exceeds the current state of the art by a wide margin.
机译:我们呈现出完全无形的语言不可知论者名为实体识别系统。在近期人工神经网络研究进展之后,识别器采用基于门控线性单元(GRU)的参数化整流线性单元(PRELU),Word Embeddings和字符级嵌入式。如果没有任何特征工程,只使用表面形式,LEMMAS和标签作为输入,网络在捷克语中实现了优异的结果,并超越了先前发布的捷克网系统的当前状态,该系统使用手动设计的基于规则的正交分类特征。此外,即使仅在表面形式可用作输入时,神经网络也能实现鲁棒的结果。此外,所提出的神经网络可以使用手动设计的基于规则的正交分类特征和这样的组合,它通过宽边缘超过现有技术的当前状态。

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