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This article is cited in 2 scientific papers (total in 2 papers)
COMPUTER SCIENCE
Online web navigation assistant
N. M. Aliabc, A. M. Gadallaha, H. A. Hefnya, B. A. Novikovc a Cairo University, Giza, Egypt
b Port Said University, Port Said, Egypt
c National Research University Higher School of Economics, Saint Petersburg, Russia
Abstract:
The problem of finding relevant data while searching the internet represents a big challenge for web users due to the enormous amounts of available information on the web. These difficulties are related to the well-known problem of information overload. In this work, we propose an online web assistant called OWNA. We developed a fully integrated framework for making recommendations in real-time based on web usage mining techniques. Our work starts with preparing raw data, then extracting useful information that helps build a knowledge base as well as assigns a specific weight for certain factors. The experiments show the advantages of the proposed model against alternative approaches.
Keywords:
web mining, web personalization, link prediction, web usage mining, recommender systems, web log, web navigation assistant.
Received: 08.07.2020
Citation:
N. M. Ali, A. M. Gadallah, H. A. Hefny, B. A. Novikov, “Online web navigation assistant”, Vestn. Udmurtsk. Univ. Mat. Mekh. Komp. Nauki, 31:1 (2021), 116–131
Linking options:
https://www.mathnet.ru/eng/vuu759 https://www.mathnet.ru/eng/vuu/v31/i1/p116
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Abstract page: | 279 | Full-text PDF : | 173 | References: | 36 |
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