Chi-squared Amplification: Identifying Hidden Hubs
Ravi Kannan, Santosh Vempala

TL;DR
This paper introduces a polynomial-time algorithm for detecting hidden hubs in random matrices under a generalized Gaussian model, surpassing previous barriers and establishing lower bounds based on chi-squared divergence.
Contribution
The paper presents a novel polynomial-time algorithm for identifying hidden hubs with high probability when the variance condition is met, extending previous methods and establishing lower bounds.
Findings
Algorithm works for $k \,\geq\, n^{0.5-\delta}$ with high probability
Lower bounds show no polynomial-time SQ algorithm exists below a variance threshold
Improved detection at the critical variance value with $k\geq c\sqrt n(\ln n)^{1/4}$
Abstract
We consider the following general hidden hubs model: an random matrix with a subset of special rows (hubs): entries in rows outside are generated from the probability distribution ; for each row in , some of its entries are generated from , , and the rest of the entries from . The problem is to identify the high-degree hubs efficiently. This model includes and significantly generalizes the planted Gaussian Submatrix Model, where the special entries are all in a submatrix. There are two well-known barriers: if , just the row sums are sufficient to find in the general model. For the submatrix problem, this can be improved by a factor to by spectral methods or combinatorial methods. In the variant with…
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Taxonomy
TopicsRandom Matrices and Applications · Blind Source Separation Techniques · Markov Chains and Monte Carlo Methods
