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Text classification dimension reduction algorithm for Chinese web page based on deep learning

机译:基于深度学习的中文网页文本分类降维算法

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摘要

Nowadays, due to the development of network technology, the Internet becomes the main resource for people to obtain information. The openness of the network makes the network abound of all kinds of information, so it becomes more and more important that using network text classification techniques enable people to get the information they are interested in quickly from the mixed and disorderly network information. Since network text classification technology is the basis of information filtering, search engines, and other fields, it has gradually become a research focus. The traditional text classification technology can't effectively support the Chinese web page text classification because of the large scale of Chinese web page text. An important way to learn the data feature from massive data is to use deep learning neural network structure. Deep learning network has excellent feature learning ability. It can combine objects of low-level features to form advanced abstract representations of the object which will be more suitable for classification. This paper proposes a new deep learning based text classification model to solve the problem of Chinese web text categorization of dimension reduction. Moreover we verify the feasibility of this method through the experiment.
机译:当今,随着网络技术的发展,互联网已成为人们获取信息的主要资源。网络的开放性使网络中包含了各种各样的信息,因此使用网络文本分类技术使人们能够从混杂且无序的网络信息中快速获得他们感兴趣的信息变得越来越重要。由于网络文本分类技术是信息过滤,搜索引擎等领域的基础,因此它已逐渐成为研究重点。由于中文网页文本规模大,传统的文字分类技术不能有效地支持中文网页文本分类。从海量数据中学习数据特征的一种重要方法是使用深度学习神经网络结构。深度学习网络具有出色的功能学习能力。它可以组合低级特征的对象,以形成对象的高级抽象表示形式,这将更适合分类。本文提出了一种新的基于深度学习的文本分类模型,以解决中文网络文本降维的问题。此外,我们通过实验验证了该方法的可行性。

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