Analysis of Artificial Intelligence Methods for Automatic Bandwidth Adjustment for Wireless Networks

Authors

DOI:

https://doi.org/10.29019/enfoqueute.1105

Keywords:

Traffic, Internet, Machine Learning, Supervised Learning, Quality of Service

Abstract

The exponential increase in Internet traffic is mainly due to the proliferation of services such as audio and video streaming, the emergence of applications that require a lot of bandwidth to work optimally and generally the process of digitalization of services. In this context, bandwidth management plays a fundamental role, which translates into a better experience for users. Traffic congestion causes the exchange of information to become deficient, that is why techniques such as automatic bandwidth adjustment have been investigated, which manages the bandwidth according to the traffic demand, therefore in this document a study is made about the automatic bandwidth adjustment, the way in which Artificial Intelligence is integrated with computer networks, finally a comparison will be made of several machine learning methods, cataloged within supervised learning, carrying out several experiments determining that Random Forest is the most effective method to predict the automatic bandwidth adjustment, followed by Naive Bayes, Logistic Regression, and Support Vectorial Machine (SMV), on the other hand K -nearest neighbor (KNN) and neural network do not demonstrate considerable effectiveness, each experiment was carried out taking into account the Quality of Service (QoS).

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Published

2025-01-01

How to Cite

Carrillo, M., Torres Tandazo, R. V., & Barba Guaman, L. R. (2025). Analysis of Artificial Intelligence Methods for Automatic Bandwidth Adjustment for Wireless Networks. Enfoque UTE, 16(1), 45–52. https://doi.org/10.29019/enfoqueute.1105

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Section

Miscellaneous