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Improved Neural Network-based Multi-label Classification with Better Initialization Leveraging Label Co-occurrence

机译:利用标签共现的改进的基于神经网络的多标签分类和更好的初始化

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In a multi-label text classification task, in which multiple labels can be assigned to one text, label co-occurrence itself is informative. We propose a novel neural network initialization method to treat some of the neurons in the final hidden layer as dedicated neurons for each pattern of label co-occurrence. These dedicated neurons are initialized to connect to the corresponding co-occurring labels with stronger weights than to others. In experiments with a natural language query classification task, which requires multi-label classification, our initialization method improved classification accuracy without any computational overhead in training and evaluation.
机译:在可以将多个标签分配给一个文本的多标签文本分类任务中,标签共现本身就是信息性的。我们提出了一种新颖的神经网络初始化方法,将最终隐藏层中的某些神经元视为标签共现每种模式的专用神经元。这些专用的神经元被初始化为连接到相应的同时出现的标签,并且权重比其他标签强。在具有要求多标签分类的自然语言查询分类任务的实验中,我们的初始化方法提高了分类准确性,而在训练和评估中没有任何计算开销。

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