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Multi-Label Few-Shot Learning for Aspect Category Detection

机译:多标签几秒钟学习方面类别检测

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Aspect category detection (ACD) in sentiment analysis aims to identify the aspect categories mentioned in a sentence. In this paper, we formulate ACD in the few-shot learning scenario. However, existing few-shot learning approaches mainly focus on single-label predictions. These methods can not work well for the ACD task since a sentence may contain multiple aspect categories. Therefore, we propose a multi-label few-shot learning method based on the prototypical network. To alleviate the noise, we design two effective attention mechanisms. The support-set attention aims to extract better prototypes by removing irrelevant aspects. The query-set attention computes multiple prototype-specific representations for each query instance, which are then used to compute accurate distances with the corresponding prototypes. To achieve multi-label inference, we further learn a dynamic threshold per instance by a policy network. Extensive experimental results on three datasets demonstrate that the proposed method significantly outperforms strong baselines.
机译:情绪分析中的宽容类别检测(ACD)旨在识别句子中提到的方面类别。在本文中,我们在几次拍摄的学习场景中制定了ACD。然而,现有的几次射击学习方法主要关注单标准预测。由于句子可能包含多个方面类别,因此这些方法对ACD任务无法正常工作。因此,我们提出了一种基于原型网络的多标签少量学习方法。为了减轻噪音,我们设计了两个有效的注意机制。支持设置的注意力旨在通过去除无关方面来提取更好的原型。查询集注意为每个查询实例计算多个特定于特定的表示,然后用于计算具有相应原型的准确距离。为了实现多标签推理,我们通过策略网络进一步学习每个实例的动态阈值。三个数据集的广泛实验结果表明,该方法明显优于强大的基线。

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