A Convolutional Neural Network (CNN) Classification Model for Web Page: A Tool for Improving Web Page Category Detection Accuracy

Q3 Decision Sciences
Siti Hawa Apandi, Jamaludin Sallim, Rozlina Mohamed
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引用次数: 0

Abstract

Game and Online Video Streaming are the most viewed web pages. Users who spend too much time on these types of web pages may suffer from internet addiction. Access to Game and Online Video Streaming web pages should be restricted to combat internet addiction. A tool is required to recognise the category of web pages based on the text content of the web pages. Due to the unavailability of a matrix representation that can handle long web page text content, this study employs a document representation known as word cloud image to visualise the words extracted from the text content web page after data pre-processing. The most popular words are shown in large size and appear in the centre of the word cloud image. The most common words are the words that appear frequently in the text content web page and are related to describing what the web page content is about. The Convolutional Neural Network (CNN) recognises the pattern of words presented in the core portions of the word cloud image to categorise the category to which the web page belongs. The proposed model for web page classification has been compared with the other web page classification models. It shows the good result that achieved an accuracy of 85.6%. It can be used as a tool that helps to make identifying the category of web pages more accurate
卷积神经网络(CNN)网页分类模型:提高网页分类检测精度的工具
游戏和在线视频流是访问量最大的网页。在这些类型的网页上花费太多时间的用户可能会患上网瘾。应限制访问游戏和在线视频流网页,以对抗网瘾。需要一个工具来识别基于网页的文本内容的网页的类别。由于缺乏能够处理长网页文本内容的矩阵表示,本研究采用一种称为词云图像的文档表示,将数据预处理后从文本内容网页中提取的词可视化。最受欢迎的单词以大尺寸显示,并出现在单词云图像的中心。最常见的单词是在文本内容网页中出现频率最高的单词,这些单词与描述网页内容有关。卷积神经网络(CNN)识别在词云图像的核心部分呈现的词的模式,对网页所属的类别进行分类。将本文提出的网页分类模型与其他网页分类模型进行了比较。结果表明,该方法的准确率达到了85.6%。它可以作为一种工具,帮助使识别网页的类别更准确
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来源期刊
Register: Jurnal Ilmiah Teknologi Sistem Informasi
Register: Jurnal Ilmiah Teknologi Sistem Informasi Decision Sciences-Decision Sciences (miscellaneous)
CiteScore
2.50
自引率
0.00%
发文量
4
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