Analysis of Deep Learning Approach Based on Convolution Neural Network (CNN) for Classification of Web Page Title and Description Text

A. Murdiyanto, Muhammad Habibi
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Abstract

The volume of digital documents available online is growing exponentially due to the increasing use of the internet. Categorization of information obtained online is needed to make it easier for recipients of information to determine and filter which information is needed. Classification of web pages can be based on titles and descriptions, which are text data that can be done by utilizing deep learning technology for text classification. This study aimed to conduct data training and analysis experiments to determine the accuracy of the proposed deep learning architecture in classifying web page titles and descriptions. In this research, we proposed a Convolution Neural Network (CNN) architecture that generates few parameters. The training and evaluation set was conducted on the web page dataset provided by DMOZ. As a result, the proposed CNN architecture with the number of N (Dropout + 1D Convolution + ReLU activation) equal to 1 achieves the best validation accuracy. It achieves 79.51% with only generates 825,061 parameters. The proposed CNN architecture achieved outperformed performance on the accuracy of the five other technologies in the state-of-the-art.
基于卷积神经网络(CNN)的网页标题和描述文本分类深度学习方法分析
由于互联网的使用越来越多,网上可用的数字文档数量呈指数级增长。需要对在线获得的信息进行分类,以便信息接收者更容易确定和过滤需要哪些信息。网页分类可以基于标题和描述,这是文本数据,可以利用深度学习技术进行文本分类。本研究旨在进行数据训练和分析实验,以确定所提出的深度学习架构在分类网页标题和描述方面的准确性。在本研究中,我们提出了一种生成少量参数的卷积神经网络(CNN)架构。训练和评估集在DMOZ提供的网页数据集上进行。因此,本文提出的N (Dropout + 1D Convolution + ReLU activation)个数等于1的CNN架构得到了最好的验证精度。仅生成825,061个参数,达到79.51%。所提出的CNN架构在精度上优于其他五种最先进的技术。
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