利用词嵌入技术从社交网络数据中生成摩洛哥方言的停词列表

Zineb Nassr, N. Sael, F. Benabbou
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引用次数: 1

摘要

自然语言处理(NLP)是人工智能的一个分支,它帮助计算机理解、解释和操纵人类语言。NLP借鉴了许多学科,包括计算机科学和计算语言学,以填补人类交流和计算机理解之间的空白。在信息时代,利用自然语言处理优化信息搜索过程、文本摘要、文本和数据分析系统变得尤为重要。因此,为了达到准确性,必须对无语义或低语义的冗余词进行过滤。这些词被称为停顿词。“停止词列表”是为阿拉伯语、英语、汉语、法语等语言开发的。但是方言的标准停顿词列表总是缺失的,比如摩洛哥方言。手工识别摩洛哥方言的停顿词是一项艰巨的任务,尤其是一个简单的停顿词有多种写法。在这项工作中,我们提出了一种新的摩洛哥方言停止词生成方法。为了实现这一目标,我们首先实现了预处理步骤以降低噪声,创建停止词字典以丰富我们的数据库以用于训练目的,最后使用词嵌入来构建停止词聚类。这份榜单来自三个流行的社交网络:Facebook、twitter和YouTube。
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Generate a list of Stop Words in Moroccan Dialect from Social Network Data Using Word Embedding
Natural Language Processing (NLP) is a branch of artificial intelligence AI that helps computers understand, interpret and manipulate human language. NLP draws from many disciplines, including computer science and computational linguistics, in its pursuit to fill the gap between human communication and computer understanding. In the information age, using NLP for optimizing information search process, text summary, text, and data analysis systems become the most important. So, to achieve accuracy, redundant words without or with low semantic meaning must be filtered. These words are known as stop words. The Stop words list has been developed for languages like Arabic, English, Chinese, French, etc. But Standard Stop Words list is always missing for dialects, as Moroccan dialect. Manual Identification of stop words for the Moroccan dialect is a difficult task, especially with the diversity of ways that can be used to write a simple stop word. In this work, we propose a novel method for Moroccan dialect stop word generation. To attempt this objective, we first realize preprocessing steps to reduce noise, create stop words dictionary to enrich our database for training purposes and finally use word embedding to build stop words clusters. This list is generated from three popular social networks: Facebook, twitter, and YouTube.
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