Vishnu Priya Biyyapu, Sastry Kodanda Rama Jammalamadaka, Sasi Bhanu Jammalamadaka, Bhupati Chokara, Bala Krishna Kamesh Duvvuri, Raja Rao Budaraju
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Building an Expert System through Machine Learning for Predicting the Quality of a Website Based on Its Completion
The main channel for disseminating information is now the Internet. Users have different expectations for the calibre of websites regarding the posted and presented content. The website’s quality is influenced by up to 120 factors, each represented by two to fifteen attributes. A major challenge is quantifying the features and evaluating the quality of a website based on the feature counts. One of the aspects that determines a website’s quality is its completeness, which focuses on the existence of all the objects and their connections with one another. It is not easy to build an expert model based on feature counts to evaluate website quality, so this paper has focused on that challenge. Both a methodology for calculating a website’s quality and a parser-based approach for measuring feature counts are offered. We provide a multi-layer perceptron model that is an expert model for forecasting website quality from the "completeness" perspective. The accuracy of the predictions is 98%, whilst the accuracy of the nearest model is 87%.