DocumentCode :
1358749
Title :
Spatio-Temporal Compressive Sensing and Internet Traffic Matrices (Extended Version)
Author :
Roughan, Matthew ; Zhang, Yin ; Willinger, Walter ; Qiu, Lili
Author_Institution :
Univ. of Adelaide, Adelaide, SA, Australia
Volume :
20
Issue :
3
fYear :
2012
fDate :
6/1/2012 12:00:00 AM
Firstpage :
662
Lastpage :
676
Abstract :
Despite advances in measurement technology, it is still challenging to reliably compile large-scale network datasets. For example, because of flaws in the measurement systems or difficulties posed by the measurement problem itself, missing, ambiguous, or indirect data are common. In the case where such data have spatio-temporal structure, it is natural to try to leverage this structure to deal with the challenges posed by the problematic nature of the data. Our work involving network datasets draws on ideas from the area of compressive sensing and matrix completion, where sparsity is exploited in estimating quantities of interest. However, the standard results on compressive sensing are: 1) reliant on conditions that generally do not hold for network datasets; and 2) do not allow us to exploit all we know about their spatio-temporal structure. In this paper, we overcome these limitations with an algorithm that has at its heart the same ideas espoused in compressive sensing, but adapted to the problem of network datasets. We show how this algorithm can be used in a variety of ways, in particular on traffic data, to solve problems such as simple interpolation of missing values, traffic matrix inference from link data, prediction, and anomaly detection. The elegance of the approach lies in the fact that it unifies all of these tasks and allows them to be performed even when as much as 98% of the data is missing.
Keywords :
Internet; compressed sensing; matrix algebra; telecommunication traffic; Internet traffic matrices; large-scale network datasets; measurement systems; measurement technology; spatio-temporal compressive sensing; spatio-temporal structure; traffic data; Approximation algorithms; Compressed sensing; Interpolation; Matrix decomposition; Redundancy; Sparse matrices; Compressed sensing; interpolation; prediction methods; tomography;
fLanguage :
English
Journal_Title :
Networking, IEEE/ACM Transactions on
Publisher :
ieee
ISSN :
1063-6692
Type :
jour
DOI :
10.1109/TNET.2011.2169424
Filename :
6058636
Link To Document :
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