阿拉伯语单词的无监督生成

A. Khorsi, A. Alsheddi
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引用次数: 1

摘要

自动单词生成可以看作是词法学习的逆向过程。其目的是在目标语言中自动创造有效的单词。与自然语言处理(NLP)领域的许多其他挑战一样,生成引擎的构建可能使用监督或非监督方法进行。前者需要一个大小合适的干净的学习数据集,而后者只需要一个纯文本。尽管如此,无监督的方法通常因其低准确率而受到指责。本文报道了对经典阿拉伯语词无上下文生成的研究结果。无监督且相对简单,所提出的方法很容易达到90%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised generation of Arabic words
Automated word generation might be seen as the reverse process of morphology learning. The aim is to automatically coin valid words in the targeted language. As many other challenges in the field of natural language processing (NLP), the building of the generation engine might be carried out using a supervised or unsupervised approach. The former requires a clean learning data set of a decent size whereas the later needs no more than a plain text. Nonetheless, the unsupervised approaches are usually blamed for their low accuracy. The present article reports the results of an investigation on a context free generation of classical Arabic words. Unsupervised and relatively simple, The proposed approach reached easily an accuracy of 90%.
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