Title
Scaling topology pattern matching: a distributed approach.
Abstract
Graph pattern matching in network topologies is a building block of many distributed algorithms. Based on a limited local view of the topology, pattern-based algorithms substantiate the decision-making of each device on the occurrence of graph patterns in its surrounding topology. Existing pattern-based algorithms require that each device has a sufficiently large local view to match patterns without support of other devices. In practical environments, the local view is often restricted to one hop. Thus, algorithms matching non-trivial patterns are locked out from such environments today. This paper presents the first algorithm for distributed topology pattern matching, enabling pattern matching beyond the local view. Outgoing from initiating devices, our pattern matcher delegates the matching procedure to further devices in the network. Exploring major contextual parameters of our algorithm, we show that the optimal local view size depends on scenario-specific conditions. Our pattern matcher provides the flexibility for adaptations of the local view size at runtime. Making use of this flexibility, we optimize the execution of an established pattern-based algorithm and evaluate our pattern matcher in two topology control case studies for the Internet of Things. By scaling the view size of each device in a distributed way, our adaptive approach achieves significant communication cost savings in face of dynamic conditions.
Year
DOI
Venue
2018
10.1145/3167132.3167241
SAC 2018: Symposium on Applied Computing Pau France April, 2018
Keywords
Field
DocType
Graph pattern matching, locality control, topology control
Topology,Graph pattern matching,Topology control,Graph patterns,Computer science,Internet of Things,Network topology,Distributed algorithm,Scaling,Pattern matching
Conference
ISBN
Citations 
PageRank 
978-1-4503-5191-1
1
0.35
References 
Authors
25
7
Name
Order
Citations
PageRank
Michael Stein1357.64
Alexander Frömmgen2517.69
Roland Kluge3235.06
Lin Wang422032.09
Augustin Wilberg530.72
B. Koldehofe6124.01
Max Mühlhäuser71652252.87