Multiresolution Analysis and Statistical Thresholding on Dynamic Networks
Rapha\"el Romero, Tijl De Bie, Nick Heard, Alexander Modell

TL;DR
This paper introduces ANIE, a multi-resolution framework for detecting structural changes in dynamic networks that adapts to multiple time scales, improving detection accuracy over fixed-resolution methods.
Contribution
The paper presents ANIE, an adaptive method that automatically identifies relevant time scales for network change detection, addressing the limitations of fixed-resolution approaches.
Findings
ANIE effectively captures both rapid and gradual network changes.
Theoretical guarantees support the statistical validity of the affinity coefficients.
Experiments demonstrate improved detection accuracy and robustness to noise.
Abstract
Detecting structural change in dynamic network data has wide-ranging applications. Existing approaches typically divide the data into time bins, extract network features within each bin, and then compare these features over time. This introduces an inherent tradeoff between temporal resolution and the statistical stability of the extracted features. Despite this tradeoff, reminiscent of time-frequency tradeoffs in signal processing, most methods rely on a fixed temporal resolution. Choosing an appropriate resolution parameter is typically difficult and can be especially problematic in domains like cybersecurity, where anomalous behavior may emerge at multiple time scales. We address this challenge by proposing ANIE (Adaptive Network Intensity Estimation), a multi-resolution framework designed to automatically identify the time scales at which network structure evolves, enabling the…
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Taxonomy
TopicsSoftware System Performance and Reliability · Time Series Analysis and Forecasting · Complex Network Analysis Techniques
