使用隐马尔可夫方法的统计马来语词性标注器

H. Mohamed, N. Omar, M. J. Aziz
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引用次数: 30

摘要

在自然语言处理(NLP)任务中,为句子中的单词分配词性是流水线过程之一。本文研究了马来语句子的三重隐马尔可夫模型统计词性标注器。标注器方法的问题是对训练语料库中未见词的词性进行预测,训练语料库可以根据词的周围信息猜测词的词性。预测器是根据单词的前缀、后缀或它们的组合信息构建的。线性逐次抽象被用来平滑未知马来语词的词性概率分布。然而,对于前缀和后缀信息的组合,则使用联合概率分布。通过查看单词的前三个字符,通过前缀信息来预测未知单词的词性,效果最好。标注正确率为67.9%。这表明使用隐马尔可夫模型的马来语统计标记器能够以一定的准确性预测任何未知单词的词性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical malay part-of-speech (POS) tagger using Hidden Markov approach
Assigning part of speech to running words in a sentence is one of the pipeline processes in Natural Language Processing (NLP) tasks. In this paper, a statistical POS tagger using trigram Hidden Markov Model for tagging Malay language sentences is examined. The problem of the tagger approach is to predict the POS for unseen words in the training corpus that can guess word's POS based on their surrounding information. The predictor has been built based on information of word's prefixes, suffixes or combination of them. Linear successive abstraction has been used for smoothing the probability distribution of part of speech for unknown Malay words given their prefixes or suffixes information. However, for the combination of prefixes and suffixes information, the joint probability distribution has been used. The best performance to predict POS of unknown words are obtained through prefixes information by seeing the first three characters of the words. The accuracy of the tagging is 67.9%. This shows that a statistical tagger for Malay language using Hidden Markov Model is able to predict any unknown word's POS at some promising accuracy.
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