A Semantic Approach to Negation Detection and Word Disambiguation with Natural Language Processing

Izunna Okpala, Guillermo Romera Rodriguez, Andrea Tapia, S. Halse, Jessica Kropczynski
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引用次数: 1

Abstract

This study aims to demonstrate the methods for detecting negations in a sentence by uniquely evaluating the lexical structure of the text via word-sense disambiguation. The proposed framework examines all the unique features in the various expressions within a text to resolve the contextual usage of all tokens and decipher the effect of negation on sentiment analysis. The application of popular expression detectors skips this important step, thereby neglecting the root words caught in the web of negation and making text classification difficult for machine learning and sentiment analysis. This study adopts the Natural Language Processing (NLP) approach to discover and antonimize words that were negated for better accuracy in text classification using a knowledge base provided by an NLP library called WordHoard. Early results show that our initial analysis improved on traditional sentiment analysis, which sometimes neglects negations or assigns an inverse polarity score. The SentiWordNet analyzer was improved by 35%, the Vader analyzer by 20% and the TextBlob by 6%.
基于自然语言处理的否定检测和消歧的语义方法
本研究旨在通过词义消歧对文本的词汇结构进行独特的评价,从而展示句子中否定的检测方法。提出的框架检查文本中各种表达的所有独特特征,以解决所有标记的上下文用法,并破译否定对情感分析的影响。流行表达检测器的应用跳过了这一重要步骤,从而忽略了在否定网络中捕获的词根,使机器学习和情感分析的文本分类变得困难。本研究采用自然语言处理(NLP)方法,使用一个名为WordHoard的自然语言处理库提供的知识库来发现和反化被否定的单词,以提高文本分类的准确性。早期的结果表明,我们的初步分析改进了传统的情感分析,传统的情感分析有时会忽略否定或分配相反的极性分数。SentiWordNet分析仪提高了35%,Vader分析仪提高了20%,TextBlob提高了6%。
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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