ONTOLOGY-BASED APPROACH FOR FEATURE LEVEL SENTIMENT ANALYSIS

Eman M. Aboelela, Walaa K. Gad, R. Ismail
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引用次数: 2

Abstract

: Through the state-of-the-art digitalization, we can see a massive growth in user-generated content on the web that provides feedback from people on a variety of topics. However, manually managing large-scale user feedback would be a difficult task and a waste of time. Therefore, the concept of sentiment analysis is emerged. Sentiment analysis is a computerized study of individuals' feelings and opinions about an entity or product. It can be executed at three different levels: document level, sentence or phrase level, and feature level. This paper proposes a novel ontology-based approach for feature level sentiment analysis. The proposed approach extracts the product features using semantic similarity and Wordnet ontology and uses the SentiWordent dictionary to classify the users’ comments as positive and negative. Furthermore, it manages negative words to obtain more precise classification results. The proposed approach is assessed by using two benchmark amazon products’ datasets in terms of accuracy; recall, precision, and f-measure. The performance reaches to 92.4% accuracy, 97.2% precision, 92.8 % recall, and 94.4% f-measure.
基于本体的特征级情感分析方法
通过最先进的数字化技术,我们可以看到网络上用户生成内容的巨大增长,这些内容提供了人们对各种主题的反馈。然而,手动管理大规模用户反馈将是一项艰巨的任务,并且浪费时间。因此,情感分析的概念应运而生。情感分析是一种计算机化的个人对实体或产品的感受和观点的研究。它可以在三个不同的级别上执行:文档级别、句子或短语级别和功能级别。提出了一种基于本体的特征级情感分析方法。该方法利用语义相似度和Wordnet本体提取产品特征,并使用SentiWordent字典对用户评论进行正面和负面分类。此外,它还对否定词进行管理,以获得更精确的分类结果。通过使用两个基准的亚马逊产品数据集来评估所提出的方法的准确性;召回率、精确度和f测量值。准确率为92.4%,精密度为97.2%,召回率为92.8%,f-measure为94.4%。
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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