In this paper, we present empirical analysis on basic and depression specific multi-emotion mining in Tweets with the help of state of the art multi-label classifiers. We choose our basic emotions from a hybrid emotion model consisting of the common emotions from four highly regarded psychological models of emotions. Moreover, we augment that emotion model with new emotion categories because of their importance in the analysis of depression. Most of those additional emotions have not been used in previous emotion mining research. Our experimental analyses show that a cost sensitive RankSVM algorithm and a Deep Learning model are both robust, measured by both Macro F-measures and Micro F-measures. This suggests that these algorithms are superior in addressing the widely known data imbalance problem in multi-label learning. Moreover, our application of Deep Learning performs the best, giving it an edge in modeling deep semantic features of our extended emotional categories.
翻译:在本文中,我们借助先进的多标签分类器,对Tweets的低压和低压特定多感性采矿进行了实验性分析。我们从由四种高度受关注的情绪心理模式中共同情感组成的混合情感模型中选择了我们的基本情感。此外,我们用新的情感类别来增加这种情绪模式,因为它们在分析抑郁症中的重要性。在以前的情感挖掘研究中,大部分额外的情感没有被使用。我们的实验性分析表明,成本敏感的RankSVM算法和深智学习模式都是强大的,既用宏观F计量法衡量,又用微量F计量法衡量。这表明这些算法在解决多标签学习中广为人知的数据不平衡问题方面具有优越性。此外,我们深层次学习的应用表现了最好的表现,在模拟我们扩展情感类别的深层语义特征方面有了优势。