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Enhanced sentiment analysis of informal textual communication in social media by considering objective words and intensifiers

机译:通过考虑客观言语和强烈因素,增强了社交媒体非正式文本沟通的情感分析

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Sentiment analysis is a valuable knowledge resource to understand collective sentiments from the web and helps make better informed decisions. Sentiments may be positive, negative or objective and the method of assigning sentiment weights to terms and sentences are important factors in determining the accuracy of the sentiment classification. We use standard methods such as Natural Language Processing, Support Vector Machines and SentiWordNet lexical resource. Our work aims at improving the sentiment classification by modifying the sentiment values returned by SentiWordNet for intensifiers based on the context to the semantic of the words related to the intensifier. We also reassign some of the objective words to either positive or negative sentiment. We test our sentiment classification method with product reviews of digital cameras gathered from Amazon and ebay and shows that our method improves the prediction accuracy.
机译:情绪分析是一个有价值的知识资源,以了解网络的集体情绪,并有助于提高知情决策。情绪可能是积极的,负面的或目标,并且将情感权重与术语和句子分配的方法是确定情绪分类准确性的重要因素。我们使用自然语言处理等标准方法,支持向量机和SentiWordNet词汇资源。我们的工作旨在通过根据与增强器相关的单词的语义来修改Contifiers返回的Contififer返回的情感值来改善情绪分类。我们还将一些客观词重新分配给积极或负面情绪。我们测试我们的情感分类方法,并通过从亚马逊和eBay聚集的数码相机的产品评论,表明我们的方法提高了预测准确性。

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