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  • 1
    Online Resource
    Online Resource
    Angle Publishing Co., Ltd. ; 2023
    In:  網際網路技術學刊 Vol. 24, No. 4 ( 2023-07), p. 923-930
    In: 網際網路技術學刊, Angle Publishing Co., Ltd., Vol. 24, No. 4 ( 2023-07), p. 923-930
    Abstract: 〈p〉New words detection, as basic research in natural language processing, has gained extensive concern from academic and business communities. When the existing Chinese word segmentation technology is applied in the specific field of tax-related finance, because it cannot correctly identify new words in the field, it will have an impact on subsequent information extraction and entity recognition. Aiming at the current problems in new word discovery, it proposed a new word detection method using statistical features that are based on the inner measurement and branch entropy and then combined with word vector representation. First, perform word segmentation preprocessing on the corpus, calculate the internal cohesion degree of words through statistics of scattered string mutual information, filter out candidate two-tuples, and then filter and expand the two-tuples; next, it locks the boundaries of new words through calculate the branch entropy. Finally, expand the new vocabulary dictionary according to the cosine similarity principle of word vector representation. The unsupervised neologism discovery proposed in this paper allows for automatic growth of the neologism lexicon, experimental results on large-scale corpus verify the effectiveness of this method.〈/p〉 〈p〉 〈/p〉
    Type of Medium: Online Resource
    ISSN: 1607-9264 , 1607-9264
    Uniform Title: Discovery of New Words in Tax-related Fields Based on Word Vector Representation
    Language: Unknown
    Publisher: Angle Publishing Co., Ltd.
    Publication Date: 2023
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