Label-enhanced Prototypical Network with Contrastive Learning for
Multi-label Few-shot Aspect Category Detection
- URL: http://arxiv.org/abs/2206.13980v1
- Date: Tue, 14 Jun 2022 02:37:44 GMT
- Title: Label-enhanced Prototypical Network with Contrastive Learning for
Multi-label Few-shot Aspect Category Detection
- Authors: Han Liu, Feng Zhang, Xiaotong Zhang, Siyang Zhao, Junjie Sun, Hong Yu,
Xianchao Zhang
- Abstract summary: Multi-label aspect category detection allows a given review sentence to contain multiple aspect categories.
We propose a novel label-enhanced network (LPN) for multi-label few-shot aspect category detection.
- Score: 17.228616743739412
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multi-label aspect category detection allows a given review sentence to
contain multiple aspect categories, which is shown to be more practical in
sentiment analysis and attracting increasing attention. As annotating large
amounts of data is time-consuming and labor-intensive, data scarcity occurs
frequently in real-world scenarios, which motivates multi-label few-shot aspect
category detection. However, research on this problem is still in infancy and
few methods are available. In this paper, we propose a novel label-enhanced
prototypical network (LPN) for multi-label few-shot aspect category detection.
The highlights of LPN can be summarized as follows. First, it leverages label
description as auxiliary knowledge to learn more discriminative prototypes,
which can retain aspect-relevant information while eliminating the harmful
effect caused by irrelevant aspects. Second, it integrates with contrastive
learning, which encourages that the sentences with the same aspect label are
pulled together in embedding space while simultaneously pushing apart the
sentences with different aspect labels. In addition, it introduces an adaptive
multi-label inference module to predict the aspect count in the sentence, which
is simple yet effective. Extensive experimental results on three datasets
demonstrate that our proposed model LPN can consistently achieve
state-of-the-art performance.
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