2019
DOI: 10.1109/access.2019.2916648
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Unsupervised Machine Learning for Networking: Techniques, Applications and Research Challenges

Abstract: While machine learning and artificial intelligence have long been applied in networking research, the bulk of such works has focused on supervised learning. Recently there has been a rising trend of employing unsupervised machine learning using unstructured raw network data to improve network performance and provide services such as traffic engineering, anomaly detection, Internet traffic classification, and quality of service optimization. The interest in applying unsupervised learning techniques in networkin… Show more

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Cited by 283 publications
(163 citation statements)
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“…However, as mobile networks generate considerable amounts of unlabeled data every day, data labeling is costly and requires domain-specific knowledge. To facilitate the analysis of raw mobile network data, unsupervised learning becomes essential in extracting insights from unlabeled data [567], so as to optimize the mobile network functionality to improve QoE.…”
Section: Deep Unsupervised Learning In Mobile Networkmentioning
confidence: 99%
“…However, as mobile networks generate considerable amounts of unlabeled data every day, data labeling is costly and requires domain-specific knowledge. To facilitate the analysis of raw mobile network data, unsupervised learning becomes essential in extracting insights from unlabeled data [567], so as to optimize the mobile network functionality to improve QoE.…”
Section: Deep Unsupervised Learning In Mobile Networkmentioning
confidence: 99%
“…2) Unsupervised Learning: Unsupervised Learning refers to developing algorithms that use data with no labels to analyze the behavior or the system being investigated [156]. Thus, the algorithm does not know about the truth of the outcome.…”
Section: H) Time Series Analysismentioning
confidence: 99%
“…Machine learning (ML) techniques are starting to be applied to different aspects of the orchestration process in the cloud, such as data centre scheduling [31,57,104], IaaS instance selection [134], optimising resource scalability [35,25,21], network flow classification [172,158], network performance prediction [148], and software defect classification [115]. When fed with the enormous Predictive resource estimation [25,21] Predictive scheduling [31] Delegation, asymptotic deployment [121,20] Data access prediction Workflow delegation/handover -…”
Section: Learning To Orchestratementioning
confidence: 99%