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Affect Analysis of Web Forums and Blogs Using Correlation Ensembles

机译:相关集合对Web论坛和博客的影响分析

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Analysis of affective intensities in computer mediated communication is important in order to allow a better understanding of online users'' emotions and preferences. Despite considerable research on textual affect classification, it is unclear which features and techniques are most effective. In this study we compared several feature representations for affect analysis, including learned n-grams and various automatically and manually crafted affect lexicons. We also proposed the support vector regression correlation ensemble (SVRCE) method for enhanced classification of affect intensities. SVRCE uses an ensemble of classifiers each trained using a feature subset tailored towards classifying a single affect class. The ensemble is combined with affect correlation information to enable better prediction of emotive intensities. Experiments were conducted on four test beds encompassing web forums, blogs, and online stories. The results revealed that learned n-grams were more effective than lexicon based affect representations. The findings also indicated that SVRCE outperformed comparison techniques, including Pace regression, semantic orientation, and WordNet models. Ablation testing showed that the improved performance of SVRCE was attributable to its use of feature ensembles as well as affect correlation information. A brief case study was conducted to illustrate the utility of the features and techniques for affect analysis of large archives of online discourse.
机译:为了更好地了解在线用户的情绪和偏好,分析计算机介导的交流中的情感强度非常重要。尽管对文本情感分类进行了大量研究,但尚不清楚哪些功能和技术最有效。在这项研究中,我们比较了几种用于情感分析的特征表示,包括学习的n-gram和各种自动和手工制作的情感词典。我们还提出了支持向量回归相关合奏(SVRCE)方法,用于增强影响强度的分类。 SVRCE使用了一组分类器,每个分类器都使用为对单个情感类进行分类而定制的功能子集进行训练。该合奏与情感相关信息相结合,可以更好地预测情绪强度。实验在四个测试平台上进行,包括网络论坛,博客和在线故事。结果表明,学习的n元语法比基于词典的情感表示更有效。研究结果还表明,SVRCE优于比较技术,包括Pace回归,语义定向和WordNet模型。消融测试表明,SVRCE的性能提高归因于其使用特征集合以及影响相关信息。进行了一个简短的案例研究,以说明这些功能和技术对大型在线演讲档案进行情感分析的实用性。

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