• Title/Summary/Keyword: 문맥 의존 오류

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Automatic Word Spacing of the Korean Sentences by Using End-to-End Deep Neural Network (종단 간 심층 신경망을 이용한 한국어 문장 자동 띄어쓰기)

  • Lee, Hyun Young;Kang, Seung Shik
    • KIPS Transactions on Software and Data Engineering
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    • v.8 no.11
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    • pp.441-448
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    • 2019
  • Previous researches on automatic spacing of Korean sentences has been researched to correct spacing errors by using n-gram based statistical techniques or morpheme analyzer to insert blanks in the word boundary. In this paper, we propose an end-to-end automatic word spacing by using deep neural network. Automatic word spacing problem could be defined as a tag classification problem in unit of syllable other than word. For contextual representation between syllables, Bi-LSTM encodes the dependency relationship between syllables into a fixed-length vector of continuous vector space using forward and backward LSTM cell. In order to conduct automatic word spacing of Korean sentences, after a fixed-length contextual vector by Bi-LSTM is classified into auto-spacing tag(B or I), the blank is inserted in the front of B tag. For tag classification method, we compose three types of classification neural networks. One is feedforward neural network, another is neural network language model and the other is linear-chain CRF. To compare our models, we measure the performance of automatic word spacing depending on the three of classification networks. linear-chain CRF of them used as classification neural network shows better performance than other models. We used KCC150 corpus as a training and testing data.