多标签分类的标签感知循环阅读

Sheng Ming, Huajun Liu, Ziming Luo, Peng Huang, Mark Junjie Li
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引用次数: 0

摘要

多标签分类(MLC)是自然语言处理的一个重要分支,其中一个给定的实例可能与多个标签相关联。最近,神经网络方法在标签和实例之间投入了相当大的依赖关系,实现了最先进的性能。然而,现有的方法忽略了每个文档的语义信息和标签之间隐藏的相关性。本文受人类阅读认知过程的启发,提出了一种基于神经科学的标签感知递归阅读(LARD)网络。LARD将MLC问题建模为一个循环阅读的决策过程,并根据神经科学自上而下的机制构建标签感知的文档表示。该模型在每次读取后输出对所有标签的预测,在反复读取的过程中,提高了预测精度。此外,考虑到词对标签的不同贡献,利用注意机制根据自上而下的分类预测信息动态调整词的权重。实验表明,该模型比现有模型具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Label-Aware Recurrent Reading for Multi-Label Classification
Multi-label classification (MLC) is an essential branch of natural language processing where a given instance may be associated with multiple labels. Recently, neural network approaches invested considerable dependency between labels and the instance, achieving state-of-the-art performance. However, the existing methods ignore the hidden correlations between each document's semantic information and labels. In this paper, inspired by the cognitive process of human reading, we propose a Label-Aware Recurrent Reading (LARD) network based on neuroscience. LARD modeled the MLC problem as a decision-making process of recurrent reading and constructs label-aware document representation according to the top-down mechanism of neuroscience. The model outputs the prediction of all labels after each reading, and in the process of recurrent reading, the prediction accuracy is improved. Besides, the attention mechanism is applied to make the weight of words dynamically adjust according to the topdown classification prediction information, taking into account the different contributions of words to labels. Experiments show that our model has better performance than the existing models.
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