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Affective Event Classification with Discourse-enhanced Self-training

机译:具有话语增强的自我培训的情感事件分类

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Prior research has recognized the need to associate affective polarities with events and has produced several techniques and lexical resources for identifying affective events. Our research introduces new classilication models to assign affective polarity to event phrases. First, we present a BERT-based model for affective event classification and show that the classifier achieves substantially better performance than a large affective event knowledge base. Second, we present a discourse-enhanced self-training method that iteratively improves the classifier with unlabeled data. The key idea is to exploit event phrases that occur with a coref-erent sentiment expression. The discourse-enhanced self-training algorithm iteratively labels new event phrases based on both the classifier's predictions and the polarities of the event's coreferent sentiment expressions. Our results show that discourse-enhanced self-training further improves both recall and precision for affective event classification.
机译:现已认识到需要将情感极性与事件联系起来的需要,并产生了用于识别情感事件的若干技术和词汇资源。我们的研究介绍了新的课程模型,将情感极性分配给事件短语。首先,我们提出了一种基于BERT的情感事件分类模型,并表明分类器比大型情感事件知识库实现的性能大得多。其次,我们介绍了一种增强的自我训练方法,可以使用未标记的数据来迭代地改善分类器。关键的想法是利用Coref-Werent情绪表达式发生的事件短语。话语 - 增强的自我训练算法迭代地根据分类器的预测和事件的经过事件情感表达式的极性标记新的事件短语。我们的研究结果表明,话语增强的自我培训进一步提高了对情感事件分类的召回和精确度。

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