AComparative Study of Artificial Neural Network and Genetic Algorithm in Search Engine Optimization

Mizani Mohamad Madon, Suhaila Mohd. Yasin
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Abstract

Search engine optimization applies search principles in search engines to assign a higher ranking to the most suitable webpage. Nowadays, information searching is done ubiquitously on the World Wide Web with the help of search engines. However, the process needs to be efficient and produce accurate results simultaneously. In this research, the objectives are to implement and evaluate the Artificial Neural Network and Genetic Algorithms. The accuracy result for both algorithms is compared by implementing keyword ranking, Search Engine Result Page visibility, and time retrieval for document-based and e-commerce websites. To achieve them, firstly, the problem and data are defined. Next, two datasets are importedfrom Kaggle and transformed into a more helpful format. Then, the Artificial Neural Network and Genetic Algorithms are implemented on these datasets in Python using Jupyter Notebook tools. Subsequently, the accuracy of these datasetskeyword ranking, Search Engine Result Page visibility, and time retrieval areobserved based on the output and graph. Lastly, an analysis of the results is performed. Conclusively, the Genetic Algorithm demonstrates a higher percentage of accuracy results than the Artificial Neural Network algorithm in keyword ranking and SERP visibility. However, the accuracy results of time retrieval are vice versa. The results in Genetic Algorithm show 9.0%, 9.0%, and 3.0% in the e-commerce dataset for keyword ranking and 4.0%, 51.0%, and 1.0% in the document-based dataset for SERP visibility. Next, the Artificial Neural Network algorithm shows results of 8.0%, 7.0%, and 7.0% in the e-commerce dataset and 3.0%, 50.0%, and 4.0% in the document-based dataset for time retrieval. Therefore, the results validated the ability of the Genetic Algorithm as one of the most applied algorithms in the search engine optimization field.
人工神经网络与遗传算法在搜索引擎优化中的比较研究
搜索引擎优化应用搜索引擎中的搜索原则,为最合适的网页分配更高的排名。如今,在搜索引擎的帮助下,信息搜索在万维网上无处不在。然而,这个过程需要高效,同时产生准确的结果。在本研究中,目标是实现和评估人工神经网络和遗传算法。通过实现关键字排名、搜索引擎结果页面可见性以及基于文档和电子商务网站的时间检索来比较两种算法的准确性结果。首先,对问题和数据进行定义。接下来,从Kaggle导入两个数据集,并将其转换为更有用的格式。然后,利用Jupyter Notebook工具在Python中对这些数据集进行了人工神经网络和遗传算法的实现。随后,根据输出和图观察这些数据集的准确性——关键词排名、搜索引擎结果页面可见性和时间检索。最后,对结果进行了分析。最后,遗传算法在关键词排名和SERP可见性方面比人工神经网络算法显示出更高的准确率。而时间检索的准确率结果则相反。遗传算法的结果显示,电子商务数据集中关键字排名为9.0%、9.0%和3.0%,基于文档的数据集中SERP可见性为4.0%、51.0%和1.0%。接下来,人工神经网络算法在电子商务数据集中显示了8.0%、7.0%和7.0%的结果,在基于文档的数据集中显示了3.0%、50.0%和4.0%的结果。因此,结果验证了遗传算法作为搜索引擎优化领域中应用最多的算法之一的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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