A survey of arabic text classification models

Ahed M. F. Al Sbou
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引用次数: 16

Abstract

There is a huge content of Arabic text available over online that requires an organization of these texts. As result, here are many applications of natural languages processing (NLP) that concerns with text organization. One of the is text classification (TC). TC helps to make dealing with unorganized text. However, it is easier to classify them into suitable class or labels. This paper is a survey of Arabic text classification. Also, it presents comparison among different methods in the classification of Arabic texts, where Arabic text is represented a complex text due to its vocabularies. Arabic language is one of the richest languages in the world, where it has many linguistic bases. The research in Arabic language processing is very few compared to English. As a result, these problems represent challenges in the classification, and organization of specific Arabic text. Text classification (TC) helps to access the most documents, or information that has already classified into specific classes, or categories to one or more classes or categories. In addition, classification of documents facilitate search engine to decrease the amount of document to, and then to become easier to search and matching with queries.
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阿拉伯语文本分类模型综述
网上有大量的阿拉伯语文本,需要对这些文本进行组织。因此,这里有许多与文本组织有关的自然语言处理(NLP)应用。其中之一是文本分类(TC)。TC有助于处理无组织的文本。然而,将它们分类到合适的类别或标签更容易。本文是对阿拉伯语文本分类研究的综述。同时,比较了阿拉伯文本分类的不同方法,其中阿拉伯文本由于其词汇量而被表示为一个复杂的文本。阿拉伯语是世界上最丰富的语言之一,它有许多语言基础。与英语相比,阿拉伯语的语言处理研究很少。因此,这些问题对具体阿拉伯文本的分类和组织提出了挑战。文本分类(TC)有助于访问大多数已经分类为特定类或类别的文档或信息,或将其分类为一个或多个类或类别。此外,文档分类有助于搜索引擎减少文档的数量,从而使搜索和匹配查询变得更加容易。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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