Sentimental Contrastive Learning for event representation

Yan Zhou, Xiaodong Li
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Abstract

Event representation learning is crucial for numerous event-driven tasks, as the quality of event representations greatly influences the performance of these tasks. However, many existing event representation methods exhibit a heavy reliance on semantic features, often neglecting the wealth of information available in other dimensions of events. Consequently, these methods struggle to capture subtle distinctions between events. Incorporating sentimental information can be particularly useful when modeling event data, as leveraging such information can yield superior event representations. To effectively integrate sentimental information, we propose a novel event representation learning framework, namely Sentimental Contrastive Learning (SCL). Specifically, we firstly utilize BERT as the backbone network for pre-training and obtain the initial event representations. Subsequently, we employ instance-level and cluster-level contrastive learning to fine-tune the original event representations. We introduce two distinct contrastive losses respectively for instance-level and cluster-level contrastive learning, each aiming to incorporate sentimental information from different perspectives. To evaluate the effectiveness of our proposed model, we select the event similarity evaluation task and conduct experiments on three representative datasets. Extensive experimental results demonstrate obvious performance improvement achieved by our approach over many other models.

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事件表征的情感对比学习
事件表示学习对于许多事件驱动的任务至关重要,因为事件表示的质量极大地影响了这些任务的性能。然而,许多现有的事件表示方法严重依赖语义特征,往往忽略了事件其他维度中可用的丰富信息。因此,这些方法难以捕捉事件之间的细微差别。在对事件数据建模时,包含情感信息可能特别有用,因为利用这些信息可以产生更好的事件表示。为了有效地整合情感信息,我们提出了一个新的事件表征学习框架,即情感对比学习(SCL)。具体来说,我们首先利用BERT作为骨干网络进行预训练,并获得初始事件表示。随后,我们采用实例级和集群级的对比学习来微调原始事件表示。我们介绍了两种不同的对比损失,分别是实例级和集群级的对比学习,每种对比学习都旨在从不同的角度融入情感信息。为了评估我们提出的模型的有效性,我们选择了事件相似性评估任务,并在三个具有代表性的数据集上进行了实验。大量的实验结果表明,与许多其他模型相比,我们的方法实现了明显的性能改进。
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