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Twitter Sentiment Analysis: A Bootstrap Ensemble Framework

机译:Twitter情绪分析:Bootstrap合奏框架

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Twitter sentiment analysis has become widely popular. However, stable Twitter sentiment classification performance remains elusive due to several issues: heavy class imbalance in a multi-class problem, representational richness issues for sentiment cues, and the use of diverse colloquial linguistic patterns. These issues are problematic since many forms of social media analytics rely on accurate underlying Twitter sentiments. Accordingly, a text analytics framework is proposed for Twitter sentiment analysis. The framework uses an elaborate bootstrapping ensemble to quell class imbalance, sparsity, and representational richness issues. Experiment results reveal that the proposed approach is more accurate and balanced in its predictions across sentiment classes, as compared to various comparison tools and algorithms. Consequently, the bootstrapping ensemble framework is able to build sentiment time series that are better able to reflect events eliciting strong positive and negative sentiments from users. Considering the importance of Twitter as one of the premiere social media platforms, the results have important implications for social media analytics and social intelligence.
机译:Twitter情绪分析已被广泛流行。然而,由于几个问题,稳定的推特情绪分类性能仍然难以实现:多级问题中的重型级别不平衡,情绪提示的代表性丰富问题,以及使用不同的口语语言模式。这些问题是有问题的,因为许多形式的社交媒体分析依赖于准确的潜在的推特情绪。因此,提出了一个文本分析框架,用于Twitter情感分析。该框架使用精心释放的启动集合来到Quell类不平衡,稀疏性和代表性的丰富性问题。实验结果表明,与各种比较工具和算法相比,拟议的方法在跨情感类的预测中更准确和平衡。因此,启动集合框架能够构建更好能够反映用户来自用户的强烈积极和负面情绪的事件的情绪时间序列。考虑到Twitter作为首映式社交媒体平台之一的重要性,结果对社交媒体分析和社会智能具有重要意义。

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