Graph reconstruction from path correlation data
Abstract
A communication network can be modeled as a directed connected graph with edge weights that characterize performance metrics such as loss and delay. Network tomography aims to infer these edge weights from their pathwise versions measured on a set of intersecting paths between a subset of boundary vertices, and even the underlying graph when this is not known. In particular, temporal correlations between path metrics have been used to infer composite weights on the subpath formed by the path intersection. We call these subpath weights the path correlation data.
- Publication:
-
Inverse Problems
- Pub Date:
- January 2019
- DOI:
- arXiv:
- arXiv:1804.04574
- Bibcode:
- 2019InvPr..35a5001B
- Keywords:
-
- network tomography;
- end-to-end measurement;
- covariance;
- logical trees;
- asymmetric routing;
- unicast probing;
- Mathematics - Combinatorics;
- 94C15
- E-Print:
- 25 pages, 19 figures, submitted to IP Journal