Effects of Using Arabic Web Pages in Building Rank Estimation Algorithm for Google Search Engine Results Page

Mohamed Almadhoun, Nurul Malim
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Abstract

Search Engine Optimization (SEO) aims to improve a website's reputation and user experience. Without effective SEO strategies, it requires significant investment in paid advertisements. Search Engines (SEs) use algorithms to rank results, assessing on-page and off-page factors for relevance. Machine learning techniques have been used to build classifiers for estimating page rank. However, no research has compared rank estimation with other languages or analyzed the effects of different languages on performance or differences between SEO factors. The study aims to improve rank estimation algorithms for Arabic web pages on desktop devices using a new multi-category dataset from Google Search Engine Results Page (SERP). The experimental findings suggest that Arabic web pages are more suitable than English ones for training a model to estimate the ranking of Arabic web pages. Machine learning models were applied to two datasets. SE scraping was used to collect URLs, descriptions, and other data from the Google SE. Data preprocessing steps were taken before using the datasets for rank estimation algorithms. Experiments were conducted to assess the implications of using Arabic and English web page datasets
使用阿拉伯语网页在建立谷歌搜索引擎结果页面排名估计算法的影响
搜索引擎优化(SEO)旨在提高网站的声誉和用户体验。如果没有有效的SEO策略,就需要在付费广告上投入大量资金。搜索引擎(SEs)使用算法对结果进行排序,评估页面内和页面外的相关性因素。机器学习技术已被用于构建用于估计页面排名的分类器。然而,没有研究将排名估计与其他语言进行比较,也没有研究分析不同语言对性能的影响或SEO因素之间的差异。该研究旨在使用来自谷歌搜索引擎结果页面(SERP)的新多类别数据集改进桌面设备上阿拉伯语网页的排名估计算法。实验结果表明,阿拉伯文网页比英文网页更适合训练模型来估计阿拉伯文网页的排名。机器学习模型应用于两个数据集。SE抓取用于从Google SE收集url、描述和其他数据。在使用数据集进行秩估计算法之前,采取了数据预处理步骤。实验进行了评估使用阿拉伯语和英语网页数据集的影响
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