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Multi-label Classification for Marine Science and Technology Literature

机译:海洋科学技术文献的多标签分类

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We propose a deep-learning based multi-label text classification model F-CNN for marine science and technology documents. We have set up a data set that covers about 300 thousand marine related fields for multi-label text classification. In order to solve the problem of disequilibrium of class distribution of data sets, we propose two ways of data enhancement which improves the efficiency of the model. Comparing with traditional text classification methods, the new F-CNN model optimizes the structure of traditional Text-CNN models according to the characteristics of the paper data, and has good classification effect and high execution efficiency in multi-label classification of document data.
机译:我们为海洋科学和技术文档提出了一种基于深度学习的多标签文本分类模型F-CNN。我们已经建立了一个涵盖约30万个海洋相关领域的数据集,用于多标签文本分类。为了解决数据集的类分布不平衡的问题,我们提出了两种数据增强方法,可以提高模型的效率。与传统的文本分类方法相比,新的F-CNN模型根据纸面数据的特点优化了传统的Text-CNN模型的结构,在文档数据的多标签分类中具有良好的分类效果和较高的执行效率。

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