A Machine Learning Python-Based Search Engine Optimization Audit Software

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-08-25 DOI:10.3390/informatics10030068
Konstantinos I. Roumeliotis, N. Tselikas
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Abstract

In the present-day digital landscape, websites have increasingly relied on digital marketing practices, notably search engine optimization (SEO), as a vital component in promoting sustainable growth. The traffic a website receives directly determines its development and success. As such, website owners frequently engage the services of SEO experts to enhance their website’s visibility and increase traffic. These specialists employ premium SEO audit tools that crawl the website’s source code to identify structural changes necessary to comply with specific ranking criteria, commonly called SEO factors. Working collaboratively with developers, SEO specialists implement technical changes to the source code and await the results. The cost of purchasing premium SEO audit tools or hiring an SEO specialist typically ranges in the thousands of dollars per year. Against this backdrop, this research endeavors to provide an open-source Python-based Machine Learning SEO software tool to the general public, catering to the needs of both website owners and SEO specialists. The tool analyzes the top-ranking websites for a given search term, assessing their on-page and off-page SEO strategies, and provides recommendations to enhance a website’s performance to surpass its competition. The tool yields remarkable results, boosting average daily organic traffic from 10 to 143 visitors.
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基于机器学习python的搜索引擎优化审计软件
在当今的数字环境中,网站越来越依赖数字营销实践,尤其是搜索引擎优化(SEO),将其作为促进可持续增长的重要组成部分。网站的流量直接决定了网站的发展和成功。因此,网站所有者经常聘请SEO专家的服务,以提高网站的知名度并增加流量。这些专家使用高级SEO审计工具来抓取网站的源代码,以确定符合特定排名标准(通常称为SEO因素)所需的结构变化。SEO专家与开发人员合作,对源代码进行技术更改,并等待结果。购买高级SEO审计工具或聘请SEO专家的成本通常在每年数千美元之间。在此背景下,本研究致力于向公众提供一种基于Python的开源机器学习SEO软件工具,以满足网站所有者和SEO专家的需求。该工具分析给定搜索词的排名靠前的网站,评估其页内和页外SEO策略,并提供建议,以提高网站的性能,超越竞争对手。该工具产生了显著的效果,将日均有机流量从10人提高到143人。
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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