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Dynamic Fuzzy Parser to Parse English Sentence Using POS Tagger and Fuzzy Max-Min Technique

机译:使用POS标签和模糊MAX-MIN技术解析英语句子的动态模糊解析器

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Natural Language (NL) is an essential part of ourlife. Humans use language for communication. NL is a prevailing tool used by the humans to convey the information. Natural Language Understanding (NLU) is a major challenge in Natural Language Processing (NLP). NLP is a part of Artificial Intelligence (AI). NLP provides a significant tool for communication. It attempts to produces noise free data and conversion of noise to text. NLU is having different levels. This paper presents the issue with respect to one of the level such as syntax analysis. To provide a solution for syntax analysis, dynamic fuzzy parser is designed and implemented to parse the English input sentences. Traditional approach of parsing is enhanced by applying fuzzy logic. This helps to know the syntactic correctness of the sentence. Penns tree bank parts of speech tags are used for the Parts of Speech Tagger (POS). POS tagger assigns the parts of speech tags for the input English sentence. Then these tags of the words are parsed using the grammar rules. Finally the result is displayed to represent the number of words parsed in a sentence with its associated fuzzy membership value. This parser produces Precision value of 1(100%), Recall value of 0.92 (92%) and F-measure value of 0.9583 for the sample of 50 correct and 50 incorrect sentences.
机译:自然语言(NL)是番荔枝的重要组成部分。人类使用语言进行沟通。 NL是人类使用的主要工具来传达信息。自然语言理解(NLU)是自然语言处理(NLP)中的主要挑战。 NLP是人工智能(AI)的一部分。 NLP提供了一个重要的沟通工具。它试图产生无噪声数据并将噪声转换为文本。 nlu有不同的水平。本文介绍了诸如语法分析之类的水平之一的问题。为了提供语法分析的解决方案,设计和实施动态模糊解析器以解析英文输入句子。通过应用模糊逻辑增强了传统的解析方法。这有助于了解句子的句法正确性。语音标签的Penns树库部分用于语音标记(POS)的部分。 POS标签为输入英语句子分配语音标签的部分。然后使用语法规则解析这些单词的这些标签。最后,将显示结果以表示具有相关的模糊成员资格值的句子中解析的单词数。该解析器产生1(100%)的精度值,重新调用0.92(92%)和0.9583的0.92(92%)和F值为0.9583的值为50正确和50个不正确的句子。

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