2023
DOI: 10.3390/fi15100335
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Comparison of Supervised Learning Algorithms on a 5G Dataset Reduced via Principal Component Analysis (PCA)

Joan D. Gonzalez-Franco,
Jorge E. Preciado-Velasco,
Jose E. Lozano-Rizk
et al.

Abstract: Improving the quality of service (QoS) and meeting service level agreements (SLAs) are critical objectives in next-generation networks. This article presents a study on applying supervised learning (SL) algorithms in a 5G/B5G service dataset after being subjected to a principal component analysis (PCA). The study objective is to evaluate if the reduction of the dimensionality of the dataset via PCA affects the predictive capacity of the SL algorithms. A machine learning (ML) scheme proposed in a previous artic… Show more

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“…These technologies are pivotal for supporting decision-making, automating diverse service requirements, and managing radio resources effectively. To achieve this, the substantial amount of data (big data) generated in the dynamically changing and densely populated B5G/6G environments plays a central role in training various learning algorithms, including artificial neural networks (ANNs) [21], support vector machines (SVMs) [22], reinforcement [23], and deep reinforcement learning (RL/DRL) models [24]. However, meaningful insights and the adjustment of important parameters require significant computational resources for the successive training and execution of these AI/ML tasks.…”
Section: Introductionmentioning
confidence: 99%
“…These technologies are pivotal for supporting decision-making, automating diverse service requirements, and managing radio resources effectively. To achieve this, the substantial amount of data (big data) generated in the dynamically changing and densely populated B5G/6G environments plays a central role in training various learning algorithms, including artificial neural networks (ANNs) [21], support vector machines (SVMs) [22], reinforcement [23], and deep reinforcement learning (RL/DRL) models [24]. However, meaningful insights and the adjustment of important parameters require significant computational resources for the successive training and execution of these AI/ML tasks.…”
Section: Introductionmentioning
confidence: 99%