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Morphological Analysis for Unsegmented Languages using Recurrent Neural Network Language Model

机译:基于递归神经网络语言模型的非分段语言形态学分析

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We present a new morphological analysis model that considers semantic plausibility of word sequences by using a recurrent neural network language model (RNNLM). In unsegmented languages, since language models are learned from automatically segmented texts and inevitably contain errors, it is not apparent that conventional language models contribute to morphological analysis. To solve this problem, we do not use language models based on raw word sequences but use a semantically generalized language model, RNNLM, in morphological analysis. In our experiments on two Japanese corpora, our proposed model significantly outperformed baseline models. This result indicates the effectiveness of RNNLM in morphological analysis.
机译:我们提出了一种新的形态分析模型,该模型通过使用递归神经网络语言模型(RNNLM)考虑单词序列的语义合理性。在未分段的语言中,由于语言模型是从自动分段的文本中学习的,并且不可避免地包含错误,因此,传统的语言模型对形态分析的贡献并不明显。为了解决这个问题,我们在形态分析中不使用基于原始单词序列的语言模型,而是使用语义上通用的语言模型RNNLM。在我们对两个日语语料库的实验中,我们提出的模型明显优于基线模型。该结果表明RNNLM在形态分析中的有效性。

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