2019 International Conference on Wireless and Mobile Computing, Networking and Communications (WiMob) 2019
DOI: 10.1109/wimob.2019.8923572
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A Machine Learning Based Management System for Network Services

Abstract: Providing high quality and uninterrupted network service is becoming crucial for service providers. In this paper, we present an approach to quantify and indicate service quality based on the topology state transitions from the perspective of network service provider. Building our model as a Finite State Machine (FSM), we show novel application of machine learning (ML) classification algorithms to classify appropriate states for undefined input alphabets in FSM. In other words, we implement ML algorithms to ex… Show more

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Cited by 4 publications
(3 citation statements)
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References 12 publications
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“…The border gateway protocol (BGP) data on autonomous systems (ASes) are introduced in [10], [11] for anomaly detection. ML-enabled automation in network service management has been presented in [12], where service quality states on a small network with six routers are projected using decision tree and gradient boosting algorithms. However, the current ML models target limited network resources and datasets on a special and small-scale network, which can hardly be applied to SICNs requiring high accuracy performance with efficient executions.…”
Section: A Employing ML Methodsmentioning
confidence: 99%
“…The border gateway protocol (BGP) data on autonomous systems (ASes) are introduced in [10], [11] for anomaly detection. ML-enabled automation in network service management has been presented in [12], where service quality states on a small network with six routers are projected using decision tree and gradient boosting algorithms. However, the current ML models target limited network resources and datasets on a special and small-scale network, which can hardly be applied to SICNs requiring high accuracy performance with efficient executions.…”
Section: A Employing ML Methodsmentioning
confidence: 99%
“…Such a system depends on ML methods and BDA to reduce human interaction with network status and policy data. For example, the EL-based root cause analysis proposed by Turk et al [196] must automatically discover problems and initiate suitable treatments using ML techniques without human participation. Since the RL and DRL approaches do not rely on previous information and instead gain the needed knowledge via trial and error, they are often employed to manage large and distributed networks.…”
Section: 51mentioning
confidence: 99%
“…may need to be designed to a specific problem, require high computational complexities and lack scalability features for large scale network optimization problems. Therefore, combining network orchestration with emerging ML concepts has been the focus of many research papers in recent years using reinforcement learning strategies in [5], slice admission policy control in [6], root cause analysis in [7] and network-aware scheduling policies to consider network parameters at deployment time in [8]. In this paper, we continually monitor network parameters during the whole service operation lifetime.…”
Section: A Management and Orchestration Of Cloud And Transport Networkmentioning
confidence: 99%