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基于CNN-BiLSTM网络的电子信息文本快速分类研究

李岷

数码设计Issue(11):45-48,4.
数码设计Issue(11):45-48,4.

基于CNN-BiLSTM网络的电子信息文本快速分类研究

A Study on Fast Classification of Electronic Information Text Based on CNN-BiLSTM Networks

李岷1

作者信息

  • 1. 金隆铜业有限公司,安徽铜陵 244021
  • 折叠

摘要

Abstract

Traditional text categorization methods often have slow processing speed when dealing with large-scale and complex electronic information texts,resulting in poor text categorization.Aiming at the above problems,a research on fast classification of electronic information text based on CNN-BiLSTM network is proposed.First,the similarity of electronic information texts is calculated,which can be realized by comparing the semantic similarity between texts.Next,the feature weights of the text vectors are obtained,and the keywords and phrases in the text are extracted and their importance is calculated by using natural language processing techniques.Then,CNN extracts the local features in the text and BiLSTM captures the long distance dependencies in the text.By combining these two networks,the feature vectors of the text are better extracted.Finally,the minimum distance from the text to the center of the vectors is judged to quickly classify electronic information text.The experiment proves that the method can quickly deal with large-scale and complex electronic information text,and the text classification effect is good.

关键词

CNN/BiLSTM网络/电子信息/文本快速分类

Key words

CNN/BiLSTM network/electronic information/fast text classification

分类

信息技术与安全科学

引用本文复制引用

李岷..基于CNN-BiLSTM网络的电子信息文本快速分类研究[J].数码设计,2024,(11):45-48,4.

数码设计

1672-9129

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