阿拉伯语领域自适应的分割方法

Mohammed A. Attia, Ali El-Kahky
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引用次数: 1

摘要

在许多自然语言处理应用中,切分是一个不可或缺的部分,包括机器翻译、解析和信息检索。当在标准语言上训练的模型应用于方言时,准确性会急剧下降。然而,标准语言和方言共享的词汇项目比仅仅通过表面词匹配所能找到的要多。这个共享的词汇被大量的批评、衍生和字符重复所掩盖。在本文中,我们证明了方言的分割和基归一化可以通过减少数据稀疏性来帮助领域适应。分段将通过减少oov的数量来提高系统性能,帮助隔离差异并允许更好地利用共性。我们发现,即使没有包含方言特定的POS训练数据,添加少量方言切分训练数据也可以减少5%的oov,并显着提高方言的POS标注7.37%的f-score。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation for Domain Adaptation in Arabic
Segmentation serves as an integral part in many NLP applications including Machine Translation, Parsing, and Information Retrieval. When a model trained on the standard language is applied to dialects, the accuracy drops dramatically. However, there are more lexical items shared by the standard language and dialects than can be found by mere surface word matching. This shared lexicon is obscured by a lot of cliticization, gemination, and character repetition. In this paper, we prove that segmentation and base normalization of dialects can help in domain adaptation by reducing data sparseness. Segmentation will improve a system performance by reducing the number of OOVs, help isolate the differences and allow better utilization of the commonalities. We show that adding a small amount of dialectal segmentation training data reduced OOVs by 5% and remarkably improves POS tagging for dialects by 7.37% f-score, even though no dialect-specific POS training data is included.
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