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On Fundamental Bounds on Failure Identifiability by Boolean Network Tomography

Novella Bartolini, Ting He, Viviana Arrigoni, Annalisa Massini, Federico Trombetti, Hana Khamfroush

2020IRIS Research product catalog (Sapienza University of Rome)32 citationsDOI

Abstract

Boolean network tomography is a powerful tool to infer the state (working/failed) of individual nodes from path-level measurements obtained by edge-nodes. We consider the problem of optimizing the capability of identifying network failures through the design of monitoring schemes. Finding an optimal solution is NP-hard and a large body of work has been devoted to heuristic approaches providing lower bounds. Unlike previous works, we provide upper bounds on the maximum number of identifiable nodes, given the number of monitoring paths and different constraints on the network topology, the routing scheme, and the maximum path length. These upper bounds represent a fundamental limit on identifiability of failures via Boolean network tomography. Our analysis provides insights on how to design topologies and related monitoring schemes to achieve the maximum identifiability under various network settings. Through analysis and experiments we demonstrate the tightness of the bounds and efficacy of the design insights for engineered as well as real networks.

Topics & Concepts

IdentifiabilityNetwork topologyHeuristicUpper and lower boundsComputer scienceLimit (mathematics)Path (computing)Boolean networkNetwork tomographyRouting (electronic design automation)Topology (electrical circuits)Network planning and designMathematical optimizationAlgorithmMathematicsTheoretical computer scienceBoolean functionCombinatoricsComputer networkMathematical analysisMachine learningSoftware System Performance and ReliabilityNetwork Security and Intrusion DetectionAnomaly Detection Techniques and Applications