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Disambiguating Arabic Words According to Their Historical Appearance in the Document Based on Recurrent Neural Networks

机译:根据经常性神经网络的文献中的历史外观消除阿拉伯语词语

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摘要

How can we determine the semantic meaning of a word in relation to its context of appearance? We eventually have to grabble with this difficult question, as one of the paramount problems of Natural Language Processing (NLP). In other words, this issue is commonly defined as Word Sense Disambiguation (WSD). The latter is one of the crucial difficulties within the NLP field. In this respect, word vectors extracted from a neural network model have been successfully applied for resolving the WSD problem. Accordingly, this article presents an unprecedented method to disambiguate Arabic words according to both their contextual appearance in a source text and the era in which they emerged. In fact, in the few previous decades, many researchers have been grabbling with Arabic Word Sense Disambiguation.It should be noted that the Arabic language can be divided into three major historical periods: old Arabic, middle-age Arabic, and contemporary Arabic. Actually, contemporary Arabic has proved to be the greatest concern of many researchers. The main gist of our work is to disambiguate Arabic words according to the historical period in which they appeared. To perform such a task, we suggest a method that deploys contextualized word embeddings to better gather valid syntactic and semantic information of the same word by taking into account its contextual uses. The preponderant thing is to convert both the senses and the contextual uses of an ambiguous item to vectors, then determine which of the possible conceptual meanings of the target word is closer to the given context.
机译:我们如何确定与其外观背景相关的单词的语义含义?我们最终必须与这一难题抢夺,作为自然语言处理的最重要问题之一(NLP)。换句话说,这个问题通常被定义为词感消解(WSD)。后者是NLP领域的关键困难之一。在这方面,已成功应用从神经网络模型中提取的字矢量用于解决WSD问题。因此,本文提出了一个前所未有的方法,以根据其源文本中的语境外观和它们出现的时代消除阿拉伯语。事实上,在上一几十年里,许多研究人员已经用阿拉伯语义歧义抓住了。应该指出的是,阿拉伯语可以分为三个主要的历史时期:老阿拉伯语,中年阿拉伯语和当代阿拉伯语。实际上,当代阿拉伯语被证明是许多研究人员最关注的问题。我们工作的主要主旨是根据他们出现的历史时期消除阿拉伯语词语。要执行此类任务,我们建议通过考虑其上下文用途,将一种部署上下文化单词嵌入的方法,以更好地收集相同单词的有效句法和语义信息。优势的事物是将含糊不清项目的感官和上下文使用转换为向量,然后确定目标字的哪些可能的概念含义更接近给定的上下文。

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