Please use this identifier to cite or link to this item: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/18770
Title: Fuzzy Analytic Hierarchy Process-based Learner Profile Sensitive Attributes Determination in Learning Management System
Authors: MUHAMMAD, Muhammad Kudu
Ishaq, Oyebisi Oyefolahan
Olayemi, Mikail Olaniyi
Ojeniyi, Joseph Adebayo
Keywords: Learning Management System, Learner Profile, Sensitive, Privacy Preservation,
Fuzzy Analytical Hierarchy Process
Issue Date: 28-Feb-2023
Publisher: Ilorin Journal of Computer Science and Information Technology © Department of Computer Science, University of Ilorin
Series/Report no.: Vol. 5, No. 1 (2022);ISSN: 2141-3959 (print)
Abstract: The concept of learning analytics is used for the purpose of aggregating, tracking, and scrutinising learner profiles using the digital and non-digital traits available in the Learning Management System (LMS). This is widespread with educational institutions as means of opening the potential of education through suitable analytics technologies. Recently, the openness of educational repositories to support learner profile learning analytics has raised issues of privacy due to access to sensitive information for diverse purposes. The opportunity to utilize learning technologies to be able to gather, analyze, and measure information about learners and learning environments, and process them into big data. To this end, learners’ private or sensitive attributes in the cloud big data are exposed to sub-consciousness, stalking and theft. Objective: Therefore, concerns about privacy breaches motivated this research to adopt attributes partitioning strategy into sensitive and non-sensitive attributes to enforce privacy during learner profiling using Fuzzy Analytic Hierarchy Process (FAHP) model. Method: This paper develops normalized weights and Attribute Sensitivity Index (ASI) computation index based on the FAHP model to determine top-five sensitive attributes in learners’ profile information. Ten (10) attributed were identified as most relevant for inclusion in the learner’s profile in which five (5) attributes were considered to be most-sensitive to respondents. Results: From these outcomes, top-five sensitive attributes in learner profile information were identified including: Marital Status (19.69%), CGPA (17.10%), Date of Birth (14.64%), Mobile number (14.21%), and Full Name (9.97%). Conclusion: This implies that, the top-five sensitive attributes must be protected to avoid privacy breaches, stalking, abuses, theft, sub-consciousness, harassments, and undue advantages of learners. In future works, preserving the privacy of sensitive LMS learners’ profile information can be performed in a blockchain environment.
URI: http://repository.futminna.edu.ng:8080/jspui/handle/123456789/18770
Appears in Collections:Computer Science

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