Autonomic Resilient Internet-of-Things(IoT)Management
Rossi Kamal, Choonog Seon Hong, and Mi Jung Choi

TL;DR
This paper introduces Bee, a greedy approximation scheme for resilient IoT management that addresses m-connectivity and k-dominance problems, enhancing service resilience amidst uncertain user contexts through theoretical and experimental validation.
Contribution
It proposes a novel greedy approximation algorithm Bee for resilient IoT management, with theoretical analysis and real-world prototype implementation demonstrating its effectiveness.
Findings
Bee effectively resolves m-connectivity and k-dominance problems.
Resilience improvements are validated through experiments on social rumor datasets.
Prototype implementation confirms practical applicability in Android and Web platforms.
Abstract
In Resilient IoT, the revenue of service provider is resilient to uncertain usage-contexts(e.g. emotion, environmental contexts) of Smart-device users. Hence, Autonomic Resilient IoT Management problem is decomposed into two subproblems, namely m-connectivity and k-dominance, such that m-alternations on revenue making process is resilient to users common interests, which might be depicted through k-1 alternations of usage-contexts. In this context, a greedy approximation scheme Bee is proposed, which resolves aforementioned sub-problems with five consecutive models, namely Maverick, Siren, Pigmy, Arkeo and Augeas, respectively. Theoretical analysis justifies the problem as NP-hard, combinatorial optimization problem, which is amenable to greedy approximation. Moreover, Bee lays out the theoretical foundation of Resilient Fact-finding, followed by theoretical and experimental(i.e…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Spam and Phishing Detection · Data Management and Algorithms
