WPOS语言模型及其选择与匹配算法

时间:2022-10-21 12:31:07

WPOS语言模型及其选择与匹配算法

摘要:ngrams语言模型旨在利用多个词的组合形式生成文本特征,以此训练分类器对文本进行分类。然而ngrams自身存在

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