Optimal Page Ranking Technique for Webpage Personalization Using Semantic Classifier

- Authors: P. Pranitha1, A. Manjula2, G. Narsimha3, K. Vaishali4
-
View Affiliations Hide Affiliations1 Jyothishmathi Institute of Technology and Science, Telangana, India 2 Jyothishmathi Institute of Technology and Science, Telangana, India 3 JNTUH College of Engineering, Sulthanpur, Telangana, India 4 Jyothishmathi Institute of Technological Sciences, Karimnagar, Telangana, India
- Source: Handbook of Artificial Intelligence , pp 144-164
- Publication Date: November 2023
- Language: English
Personalized webpage ranking is one of the key components in search engines. Moreover, most of the existing search engines focus only on answering user queries, although personalization will be more and more important as the amount of information available on the Web increases. Even though various re-ranking algorithms are developed, providing prompt responses to the user query results in a major challenge in web page personalization. Therefore, an efficient and effective ranking algorithm named the Oppositional Grass Bee optimization algorithm is developed to re-rank the web documents in the webpage personalization system. The proposed algorithm is designed by integrating the Oppositional Grass Hopper (OGHO) and Artificial Bee Colony optimization (ABC) algorithms. The concept of fictional computing and the foraging behavior realize the re-ranking process more effectively in the web environment. However, the semantic features extracted from the web pages make the process more effective and achieve optimal global solutions through the fitness measure. The proposed OGBEE Ranking algorithm effectively captures and analyzes the ranking scores of different search engines in order to generate the re ranked score result.
-
From This Site
/content/books/9789815124514.chap8dcterms_subject,pub_keyword-contentType:Journal -contentType:Figure -contentType:Table -contentType:SupplementaryData105
