← Back to Articles
⚠️
IEEE Published Article
This article is published by IEEE and the copyright belongs to IEEE. Please click here to access the full text.

Multicriteria Decision Analysis for Optimal Internet Service Provider Selection Using Calibrated Random Forest

View PDF

Abstract

The Internet is integral to modern life, with Internet service provider (ISP) offering appealing deals to meet the demand for unlimited data. However, reality often falls short of expectations. While recommendation systems exist, user-centric options are rare. This paper proposes a novel ISP selection methodology using user experience data and a calibrated random forest (CRF) model. Unlike traditional methods that focus on advertised features, this approach emphasizes user-defined criteria such as cost, device connectivity, and technical support experience. By analyzing survey data, the model highlights the critical link between user needs and support quality, enabling users to choose ISPs that prioritize customer service. The model demonstrates promising results with a strong R-squared value and low mean squared error (MSE). This user-centric approach fosters informed decision-making, potentially driving competition and encouraging ISPs to improve service standards, laying a foundation for future developments in ISP selection.

Keywords

Multicriteria decision analysis calibrated random forest user experience consumer-centric ISP selection datadriven and personalized ISP recommendations

Authors

M. Mazid-Ul-Haque
Department of Computer Science, American International University-Bangladesh, Dhaka, Bangladesh
S. Ahmed
Department of Computer Science, Aarhus University, Aarhus, Denmark
R. S. Aftab
Department of Computer Science, American International University-Bangladesh, Dhaka, Bangladesh
M. S. U. Miah
Department of Computer Science, American International University-Bangladesh, Dhaka, Bangladesh
W. Akanda
Department of Computer & Information Sciences, University of Delaware, Newark, USA
A. Bhowmik
Department of Computer Science, American International University-Bangladesh, Dhaka, Bangladesh

Publication Details

Type
proceedings
Publisher
IEEE
Volume
Issue
ISSN
Citations
0
Views
0