Localization of dominant eigenpairs and planted communities by means of Frobenius inner products
February 17, 2016 Β· Declared Dead Β· π Czechoslovak Mathematical Journal
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Authors
Dario Fasino, Francesco Tudisco
arXiv ID
1602.05459
Category
math.SP
Cross-listed
cs.SI,
math.NA
Citations
1
Venue
Czechoslovak Mathematical Journal
Last Checked
1 month ago
Abstract
We propose a new localization result for the leading eigenvalue and eigenvector of a symmetric matrix $A$. The result exploits the Frobenius inner product between $A$ and a given rank-one landmark matrix $X$. Different choices for $X$ may be used, depending upon the problem under investigation. In particular, we show that the choice where $X$ is the all-ones matrix allows to estimate the signature of the leading eigenvector of $A$, generalizing previous results on Perron-Frobenius properties of matrices with some negative entries. As another application we consider the problem of community detection in graphs and networks. The problem is solved by means of modularity-based spectral techniques, following the ideas pioneered by Miroslav Fiedler in mid 70s. We show that a suitable choice of $X$ can be used to provide new quality guarantees of those techniques, when the network follows a stochastic block model.
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