Domain-Independent Natural Language Processing of text using Unsupervised Translation

Adeel Munawar
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Abstract

NLP is one of the very important domains of artificial intelligence. Nowadays, advancements are being made and NLP is one of the most developing fields. In this paper, we offer a mutual use of unsupervised translation with n-grams and Natural Language Processing techniques to challenge the difficulty of unsupervised translation extraction from textual data. To build a Text Meaning Extraction System, we have to deliver one important element which is input text. This studypresented a different algorithm to work out resemblances between natural languages, by using sequence package analysis and changing them into n-grams. Whenever the sentences that are grammatically difficult and quite lengthy are applied to see the results of the presented algorithm, there are quite efficient results in a semantic reaction. To enhance the experience in the field of AI and search engines, this research paper shows how to improve the handling capability of fuzzy concepts within computers. For example, when search jobs are executed in search engines small textual concepts or sentences might be semantically formed to switch the keyword-based queries. This ability may be functional to intelligent agents to even the procedure of communication between humans and machinery.
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基于无监督翻译的文本领域独立自然语言处理
自然语言处理是人工智能的一个非常重要的领域。如今,自然语言处理正在取得进步,是发展最快的领域之一。在本文中,我们提供了n-grams和自然语言处理技术的无监督翻译的相互使用,以挑战从文本数据中提取无监督翻译的困难。为了构建一个文本意义提取系统,我们必须提供一个重要的元素,即输入文本。本研究提出了一种不同的算法来计算自然语言之间的相似性,该算法使用序列包分析并将其转换为n-gram。每当应用语法困难且相当长的句子来查看所提出的算法的结果时,都会在语义反应中得到相当有效的结果。为了提高人工智能和搜索引擎领域的经验,本研究论文展示了如何提高计算机对模糊概念的处理能力。例如,在搜索引擎中执行搜索作业时,可能会在语义上形成小的文本概念或句子,以切换基于关键字的查询。这种能力可能对智能代理甚至是人与机器之间的通信程序起作用。
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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