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A semi-supervised approach to sentiment analysis using revised sentiment strength based on SentiWordNet

机译:基于Sentiwordnet的修改情绪强度,半监督的情绪分析方法

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摘要

An immense amount of data is available with the advent of social media in the last decade. This data can be used for sentiment analysis and decision making. The data present on blogs, news/review sites, social networks, etc., are so enormous that manual labeling is not feasible and an automatic approach is required for its analysis. The sentiment of the masses can be understood by analyzing this large scale and opinion rich data. The major issues in the application of automated approaches are data unavailability, data sparsity, domain independence and inadequate performance. This research proposes a semi-supervised sentiment analysis approach that incorporates lexicon-based methodology with machine learning in order to improve sentiment analysis performance. Mathematical models such as information gain and cosine similarity are employed to revise the sentiment scores defined in SentiWordNet. This research also emphasizes on the importance of nouns and employs them as semantic features with other parts of speech. The evaluation of performance measures and comparison with state-of-the-art techniques proves that the proposed approach is superior.
机译:在过去十年中,社交媒体的出现可以获得巨大的数据。该数据可用于情绪分析和决策。博客,新闻/审查网站,社交网络等的数据如此巨大,手动标签是不可行的,并且其分析需要自动方法。通过分析这种大规模和意见丰富的数据,可以理解群众的情绪。自动方法应用中的主要问题是数据不可用,数据稀疏性,域名独立性和性能不足。本研究提出了一种半监督的情感分析方法,该方法将基于Lexicon的方法与机器学习融入,以改善情绪分析性能。使用诸如信息增益和余弦相似性的数学模型来修改SentiwordNet中定义的情绪分数。这项研究还强调了名词的重要性,并将其作为语义特征与其他部分的语音。评估性能措施和与最先进技术的比较证明了所提出的方法是优越的。

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