A dual contrastive learning-based graph convolutional network with syntax label enhancement for aspect-based sentiment classification
Yuyan Huang,
Anan Dai,
Sha Cao
et al.
Abstract:Introduction: Aspect-based sentiment classification is a fine-grained sentiment classification task. State-of-the-art approaches in this field leverage graph neural networks to integrate sentence syntax dependency. However, current methods fail to exploit the data augmentation in encoding and ignore the syntactic relation in sentiment delivery.Methods: In this work, we propose a novel graph neural network-based architecture with dual contrastive learning and syntax label enhancement. Specifically, a contrastiv… Show more
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