2023
DOI: 10.1002/dac.5661
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UIoTN‐PMSE: Ubiquitous IoT network‐based predictive modeling in smart environment

Marimuthu Karuppiah,
T. V. Ramana,
Rajanikanta Mohanty
et al.

Abstract: SummaryWe proposed a three‐stage intrusion detection system that utilizes a predictive machine learning model to identify and mitigate attacks on ubiquitous network. In the first stage, we applied Apriori‐enabled Association Rule Mining (AARM) feature selection with support vector machine (SVM) for classification of flow of network. Second, we proposed ensemble learning‐based AARM model (PAEL) for behavior analysis. Finally, for classification of multi‐task labels, we proposed swarm bat optimization‐based PAEL… Show more

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Cited by 3 publications
(2 citation statements)
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References 25 publications
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“…reference MQTT audio video AI Efficient transmission [3] x [4,5] x [6] x [7] x [8][9][10] x [11] x [12,13] x [15] x x [16] x x [17] x x x [18] x x x [19] x [20] x [21] x x x [22] x [23] x [24] x [25] x [26] x [27] x [28] x [29] x this work x x x x x…”
Section: Table 1 Related Work Comparisonmentioning
confidence: 96%
See 1 more Smart Citation
“…reference MQTT audio video AI Efficient transmission [3] x [4,5] x [6] x [7] x [8][9][10] x [11] x [12,13] x [15] x x [16] x x [17] x x x [18] x x x [19] x [20] x [21] x x x [22] x [23] x [24] x [25] x [26] x [27] x [28] x [29] x this work x x x x x…”
Section: Table 1 Related Work Comparisonmentioning
confidence: 96%
“…In [28], the authors introduce data prediction in Wireless Body Area Networks that reduces data transmission by sending anticipated sensor values instead of actual ones, requiring accurate prediction models for efficient energy saving. Finally, a three-stage ML-powered intrusion detection system for ubiquitous networks that leverages edge/fog computing for real-time threat identification, analysis, and model selfimprovement for efficient and resource-optimized security is presented in [29].…”
Section: Related Workmentioning
confidence: 99%