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authorThibaut Horel <thibaut.horel@gmail.com>2015-02-01 17:56:33 -0500
committerThibaut Horel <thibaut.horel@gmail.com>2015-02-01 17:56:33 -0500
commit3fe3a6a17548af07d6a1e23e4ef53aa5ca48bc21 (patch)
tree0e6d11f6f3db8d8b48ceecd900470527a310786e
parentc9f0053f279a7899c838aa9640d2643a4f6bbcf8 (diff)
downloadcascades-3fe3a6a17548af07d6a1e23e4ef53aa5ca48bc21.tar.gz
Intro: add precision about "single node recovery"
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@@ -22,9 +22,13 @@ an algorithm taking as input as set of observed cascades (realisations of the
diffusion process) and recovers with high probability a large fraction of the
graph edges. The goal is then to understand the relationship between the number
of observations, the probability of success, and the accuracy of the
-reconstruction. Prior work has shown that the typical required number of
-observed cascades is $\O(poly(s)\log m)$, where $m$ is the number of nodes in
-the graph, and $s$ is the maximum degree.
+reconstruction.
+
+In most cases, the Graph Inference problem can be decomposed and analyzed
+``node-by-node''. In this introduction, we will thus focus on a single node of
+degree $s$ and discuss how to identify its parents among the $m$ nodes of the
+graph. Prior work has shown that the typical required number of observed
+cascades is $\O(poly(s)\log m)$.
A more recent line of research has focused on applying advances on sparse
inverse problems to the graph inference problem. Indeed, the graph can be