Effective Negation Handling Approach for Sentiment Classification using synsets in the WordNet lexical database

Utkarsh Lal, Priyanka Kamath
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引用次数: 2

Abstract

Good quality of data preprocessing will have a greater impact on improving the performance of the classification models. Negation is one of the most important features in textual data. Only one negation word can change the polarity of the whole sentence. It is often seen that words like ‘not’, ‘non’ or suffixes like “n't” are removed during noise removal thereby leading to blunders in Sentiment Classification. Effective Feature extraction is the cornerstone of effective Sentiment Analysis and Negation handling is simply essential for this purpose. In this paper, an effective function for handling negations based on First Sentiment Word (FSW) antonymy in the WordNet has been implemented on a set of IMDB movie reviews. The function for Negation Handling created for this paper increased the accuracy of Sentiment Classification by 4-8%. Experiments done in this paper show that improving the quality of the data gives higher results than implementing different state-of-the-art methods like n-grams and even deep learning methods like Word Embeddings, especially when used in an industry setting, where there is a need of quick deployments and changes with cost effectiveness and resource management.
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基于WordNet词汇数据库句法集的情感分类有效否定处理方法
良好的数据预处理质量对提高分类模型的性能有较大的影响。否定是文本数据最重要的特征之一。一个否定词就能改变整个句子的极性。在去噪过程中,经常会出现“not”、“non”或“n’t”等词缀被去掉的情况,从而导致情感分类出现错误。有效的特征提取是有效情感分析的基石,而否定处理是实现这一目的的必要条件。本文在一组IMDB电影评论上实现了基于WordNet中第一情感词反义词的否定处理功能。本文创建的否定处理函数使情感分类的准确率提高了4-8%。本文中所做的实验表明,提高数据质量比实施不同的最先进的方法(如n-grams)甚至深度学习方法(如Word Embeddings)获得更高的结果,特别是在需要快速部署和更改成本效益和资源管理的行业环境中使用时。
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