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Long Text Classification Algorithm Using a Hybrid Model of Bidirectional Encoder Representation from Transformers-Hierarchical Attention Networks-Dilated Convolutions Network

机译:使用变压器 - 分层关注网络扩展卷轴网络的双向编码器表示的混合模型的长文本分类算法

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摘要

Text format information is full of most of the resources of Internet,which puts forward higher and higher requirements for the accuracy of text classification.Therefore,in this manuscript,firstly,we design a hybrid model of bidirectional encoder representation from transformers-hierarchical attention networks-dilated convolutions networks(BERT_HAN_DCN)which based on BERT pre-trained model with superior ability of extracting characteristic.The advantages of HAN model and DCN model are taken into account which can help gain abundant semantic information,fusing context semantic features and hierarchical characteristics.Secondly,the traditional softmax algorithm increases the learning difficulty of the same kind of samples,making it more difficult to distinguish similar features.Based on this,AM-softmax is introduced to replace the traditional softmax.Finally,the fused model is validated,which shows superior performance in the accuracy rate and F1-score of this hybrid model on two datasets and the experimental analysis shows the general single models such as HAN,DCN,based on BERT pre-trained model.Besides,the improved AM-softmax network model is superior to the general softmax network model.

著录项

  • 来源
    《东华大学学报(英文版)》 |2021年第4期|341-350|共10页
  • 作者单位

    College of Information Science and Technology Donghua University Shanghai 201620 China;

    Engineering Research Center of Digitized Textile&Apparel Technology Ministry of Education Donghua University Shanghai 201620 China;

    College of Information Science and Technology Donghua University Shanghai 201620 China;

    Engineering Research Center of Digitized Textile&Apparel Technology Ministry of Education Donghua University Shanghai 201620 China;

    College of Information Science and Technology Donghua University Shanghai 201620 China;

    Engineering Research Center of Digitized Textile&Apparel Technology Ministry of Education Donghua University Shanghai 201620 China;

    College of Information Science and Technology Donghua University Shanghai 201620 China;

    Engineering Research Center of Digitized Textile&Apparel Technology Ministry of Education Donghua University Shanghai 201620 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 文字信息处理;
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