Node Alertness-Detecting changes in rapidly evolving graphs

07/02/2019
by   Mirco A. Mannucci, et al.
0

In this article we describe a new approach for detecting changes in rapidly evolving large-scale graphs. The key notion involved is local alertness: nodes monitor change within their neighborhoods at each time step. Here we propose a financial local alertness application for cointegrated stock pairs

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