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Hierarchical Multi-label Classification of Text with Capsule Networks

机译:具有胶囊网络的文本的分层多标签分类

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Capsule networks have been shown to demonstrate good performance on structured data in the area of visual inference. In this paper we apply and compare simple shallow capsule networks for hierarchical multi-label text classification and show that they can perform superior to other neural networks, such as CNNs and LSTMs, and non-neural network architectures such as SVMs. For our experiments, we use the established Web of Science (WOS) dataset and introduce a new real-world scenario dataset, the BlurbGcnrcCollection (BGC). Our results confirm the hypothesis that capsule networks are especially advantageous for rare events and structurally diverse categories, which we attribute to their ability to combine latent encoded information.
机译:已显示胶囊网络在视觉推理区域中的结构化数据上表现出良好的性能。在本文中,我们应用并比较简单的浅胶囊网络进行分层多标签文本分类,并表明它们可以优于其他神经网络,例如CNN和LSTM,以及诸如SVM的非神经网络架构。对于我们的实验,我们使用已建立的科学网站(WOS)数据集,并引入了一个新的真实情景数据集,Blurbgcnrcolction(BGC)。我们的结果证实了假设胶囊网络对稀有事件和结构多样性类别特别有利,我们将其归因于它们组合潜在编码信息的能力。

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