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IMC
2009
ACM

Sampling biases in network path measurements and what to do about it

14 years 7 months ago
Sampling biases in network path measurements and what to do about it
We show that currently prevalent practices for network path measurements can produce inaccurate inferences because of sampling biases. The inferred mean path latency can be more than a factor of two off the true mean. We present the Broom toolkit that has three methods to correct for this bias. Broom places no burden on the measurement process itself and can be applied post hoc to any measured data set. Our evaluation finds that two of the methods are particularly effective. One of them estimates missing path samples by embedding the nodes in a low-dimensional coordinate space. For realistic sampling rates, the quality of its estimates for path latency approximates ideal, unbiased sampling. The other method is based on a view of network paths as being composed of source-specific, destination-specific, and shared components. It reduces bias for a wide range of path properties, such as latency, hop count and capacity. Applying Broom to data from a real measurement study leads to substan...
Srikanth Kandula, Ratul Mahajan
Added 28 May 2010
Updated 28 May 2010
Type Conference
Year 2009
Where IMC
Authors Srikanth Kandula, Ratul Mahajan
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