Chinese Texts Classification System

Meng Zhu, Xudong Yang
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引用次数: 3

Abstract

In this article, we designed an automatic Chinese text classification system aiming to implement a system for classifying news texts. We propose two improved classification algorithms as two different choices for users to choose and then our system uses the chosen method for the obtaining of the classified result of the input text. There are two improved algorithms, one is k-Bayes using hierarchy conception based on NB method in machine learning field and another one adds attention layer to the convolutional neural network in deep learning field. Through experiments, our results showed that improved classification algorithms had better accuracy than based algorithms and our system is useful for making classifying news texts more reasonably and effectively.
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中文文本分类系统
在本文中,我们设计了一个中文文本自动分类系统,旨在实现一个新闻文本分类系统。我们提出了两种改进的分类算法作为两种不同的选择供用户选择,然后我们的系统使用选择的方法来获得输入文本的分类结果。有两种改进算法,一种是机器学习领域中基于NB方法的层次概念的k-Bayes算法,另一种是深度学习领域中在卷积神经网络上增加注意层的算法。实验结果表明,改进后的分类算法比现有的分类算法具有更好的准确率,有助于对新闻文本进行更合理、更有效的分类。
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