Optimal partition recovery in general graphs
Yi Yu, Oscar Hernan Madrid Padilla, and Alessandro Rinaldo

TL;DR
This paper studies the problem of detecting change points in graph-structured data, deriving theoretical limits and proposing estimators that achieve near-optimal localization accuracy based on graph resistance and signal parameters.
Contribution
It characterizes the difficulty of partition recovery in graphs using graph resistance and signal-to-noise ratio, and proposes an estimator with near-minimax optimal performance.
Findings
Lower bound on partition recovery in low SNR regime
Proposed estimator achieves near-optimal error rate
Error rate depends on graph resistance and signal parameters
Abstract
We consider a graph-structured change point problem in which we observe a random vector with piecewise constant but unknown mean and whose independent, sub-Gaussian coordinates correspond to the nodes of a fixed graph. We are interested in the localisation task of recovering the partition of the nodes associated to the constancy regions of the mean vector. When the partition consists of only two elements, we characterise the difficulty of the localisation problem in terms of four key parameters: the maximal noise variance , the size of the smaller element of the partition, the magnitude of the difference in the signal values across contiguous elements of the partition and the sum of the effective resistance edge weights of the corresponding cut -- a graph theoretic quantity quantifying the size of the partition…
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Taxonomy
TopicsStatistical Methods and Inference · Gene expression and cancer classification · Statistical Methods and Bayesian Inference
