Anomalous Node Detection in Time Series of Mobile Communication Graphs Leman Akoglu January 28,...

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Anomalous Node Detection in Time Series of Mobile Communication Graphs Leman Akoglu January 28, 2010

Transcript of Anomalous Node Detection in Time Series of Mobile Communication Graphs Leman Akoglu January 28,...

Page 1: Anomalous Node Detection in Time Series of Mobile Communication Graphs Leman Akoglu January 28, 2010.

Anomalous Node Detection in Time Series of

Mobile Communication Graphs

Leman AkogluJanuary 28, 2010

Page 2: Anomalous Node Detection in Time Series of Mobile Communication Graphs Leman Akoglu January 28, 2010.

Project Question

(1) In a given graph in which- edges are weighted- nodes are UNlabeled

which nodes to consider as “anomalous”?

(2) How about in a time-series of graphs?

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Dataset: who-calls/texts-whom• 3 million customers interacting over 6 months

• + incoming/outgoing edges from/to out-of-network users

• Both SMS and phone-call

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ego

4

egonetWhich nodes are anomalous?

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Which nodes are anomalous?

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Features to characterize nodes

Ni: number of neighbors (degree) of ego i

Ei: number of edges in egonet i

Wi: total weight of egonet i

Si: number of singleton neighbors of ego i with degree 1

max(di): average degree of i’s neighbors …

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features nodes

M

“2-mode look” at the data as a matrix

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Which nodes are anomalous?

time

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nodes

M

“3-mode look” at the data as a tensor

features

time

Mt

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nodes

time

UVT∑

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Preliminary objectives

• ICA? Robust PCA?• How to capture correlations between

features?• How to do evaluation? • Anomalous edges/groups of nodes?