2021
DOI: 10.1587/transinf.2020bdp0002
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Performance Evaluation of Online Machine Learning Models Based on Cyclic Dynamic and Feature-Adaptive Time Series

Abstract: Machine learning is becoming an attractive topic for researchers and industrial firms in the area of computational intelligence because of its proven effectiveness and performance in resolving real-world problems. However, some challenges such as precise search, intelligent discovery and intelligent learning need to be addressed and solved. One most important challenge is the non-steady performance of various machine learning models during online learning and operation. Online learning is the ability of a mach… Show more

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Cited by 5 publications
(4 citation statements)
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References 52 publications
(53 reference statements)
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“…The study in [11], is a consolidated survey on resource allocation and interference mitigation in Device to Device (D2D) communication [12] with Artificial Intelligence (AI) [13] and Machine Learning (ML) [14]. However, the survey does not cover the SDN-based opportunities and challenges in achieving interference mitigation.…”
Section: A Related Previous Surveys / Reviews In Literaturementioning
confidence: 99%
“…The study in [11], is a consolidated survey on resource allocation and interference mitigation in Device to Device (D2D) communication [12] with Artificial Intelligence (AI) [13] and Machine Learning (ML) [14]. However, the survey does not cover the SDN-based opportunities and challenges in achieving interference mitigation.…”
Section: A Related Previous Surveys / Reviews In Literaturementioning
confidence: 99%
“…However, the challenges involved are due to the proposed mechanism's continuous network development and limitations. Apart from the discussed studies, several other works can be combined and explored with the mobility issues that can enhance the performance of the 5G-and-beyond network, for example, energy management [135], interference mitigation [136], machine learning protocols [137], and antenna designing [138]. The following sections will discuss the domains and crucial aspects that need immediate attention, and robust solutions in the effective management of mobility protocols that have been discussed before.…”
Section: Current Limitations and Future Challengesmentioning
confidence: 99%
“…Ultimate outcomes may also be achieved by the ideal use of different power optimizations [20,21], interference cancellation [22], handover procedures [23], routing protocols [24,25], data security management [26], and scheduling algorithms [27]. Some interesting concepts for developing 6G networks are satellite communication in the mmWave band [28], machine learning-based communication [29], artificial intelligence (AI)-based micro base stations (BSs) [30], human-centric communication [31], and blockchain [32].…”
Section: Introductionmentioning
confidence: 99%