Title :
A coding theoretic approach for evaluating accumulate distribution on minimum cut capacity of weighted random graphs
Author :
Fujii, Yuka ; Wadayama, Tadashi
Author_Institution :
Dept. of Comput. Sci. & Eng., Nagoya Inst. of Technol., Nagoya, Japan
Abstract :
The multicast capacity of a directed network is closely related to the s-t maximum flow, which is equal to the s-t minimum cut capacity due to the max-flow min-cut theorem. If the topology of a network (or link capacities) is dynamically changing or have stochastic nature, it is not so trivial to predict statistical properties on the maximum flow. In this paper, we present a coding theoretic approach for evaluating the accumulate distribution of the minimum cut capacity of weighted random graphs. The main feature of our approach is to utilize the correspondence between the cut space of a graph and a binary LDGM (low-density generator-matrix) code with column weight 2. The graph ensemble treated in the paper is a weighted version of Erdos-Rényi random graph ensemble. The main contribution of our work is a combinatorial lower bound for the accumulate distribution of the minimum cut capacity. From some computer experiments, it is observed that the lower bound derived here reflects the actual statistical behavior of the minimum cut capacity.
Keywords :
binary codes; graph theory; network topology; random codes; statistical analysis; stochastic processes; Erdos-Rέnyi random graph ensemble; accumulate distribution evaluation; binary LDGM code; coding theoretic approach; column weight 2; combinatorial lower bound; computer experiment; graph ensemble treatment; link capacity; low-density generator-matrix; max-flow min-cut theorem; maximum flow; minimum cut capacity; multicast capacity; network topology; statistical property; stochastic nature; weighted random graph; Ad hoc networks; Encoding; Network coding; Network topology; Parity check codes; Topology; Vectors;
Conference_Titel :
Information Theory and its Applications (ISITA), 2012 International Symposium on
Print_ISBN :
978-1-4673-2521-9