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The role of PASTA in network measurement
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Source IEEE/ACM Transactions on Networking (TON) archive
Volume 17 ,  Issue 4  (August 2009) table of contents
Pages 1340-1353  
Year of Publication: 2009
ISSN:1063-6692
Authors
Françis Baccelli  INRIA-ENS, Ecole Normale Supérieure, Paris, France
Sridhar Machiraju  Sprint Applied Research, Burlingame, CA and University of California, Berkeley, Berkeley, CA
Darryl Veitch  ARC Special Research Centre for Ultra-Broadband Information Networks
Jean Bolot  Sprint Applied Research, Burlingame, CA
Publisher
IEEE Press  Piscataway, NJ, USA
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DOI Bookmark: 10.1109/TNET.2008.2011129

ABSTRACT

Poisson Arrivals SeeTimeAverages (PASTA) is a well-known property applicable to many stochastic systems. In active probing, PASTA is invoked to justify the sending of probe packets (or trains) at Poisson times in a variety of contexts. However, due to the diversity of aims and analysis techniques used in active probing, the benefits of Poisson-based measurement, and the utility and role of PASTA, are unclear. Using a combination of rigorous results and carefully constructed examples and counterexamples, we map out the issues involved and argue that PASTA is of very limited use in active probing. In particular, Poisson probes are not unique in their ability to sample without bias. Furthermore, PASTA ignores the issue of estimation variance and the central need for an inversion phase to estimate the quantity of interest based on what is directly observable. We give concrete examples of when Poisson probes should not be used, explain why, and offer initial guidelines on suitable alternative sending processes.


REFERENCES

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