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Fluctuations of Spiked Random Matrix Models and Failure Diagnosis in Sensor Networks

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TLDR
In this paper, the joint fluctuations of the extreme eigenvalues and eigenvectors of a large dimensional sample covariance matrix are analyzed when the associated population covariance matrices is a finite-rank perturbation of the identity matrix, corresponding to the so-called spiked model in random matrix theory.
Abstract
In this paper, the joint fluctuations of the extreme eigenvalues and eigenvectors of a large dimensional sample covariance matrix are analyzed when the associated population covariance matrix is a finite-rank perturbation of the identity matrix, corresponding to the so-called spiked model in random matrix theory. The asymptotic fluctuations, as the matrix size grows large, are shown to be intimately linked with matrices from the Gaussian unitary ensemble. When the spiked population eigenvalues have unit multiplicity, the fluctuations follow a central limit theorem. This result is used to develop an original framework for the detection and diagnosis of local failures in large sensor networks, for known or unknown failure magnitude.

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References
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Journal ArticleDOI

Cognitive radio: making software radios more personal

TL;DR: With RKRL, cognitive radio agents may actively manipulate the protocol stack to adapt known etiquettes to better satisfy the user's needs and transforms radio nodes from blind executors of predefined protocols to radio-domain-aware intelligent agents that search out ways to deliver the services the user wants even if that user does not know how to obtain them.
Book

Aspects of multivariate statistical theory

TL;DR: In this paper, the authors present a set of standard tests on Covariance Matrices and Mean Vectors, and test independence between k Sets of Variables and Canonical Correlation Analysis.
Journal ArticleDOI

Detection of abrupt changes: theory and application

TL;DR: A unified framework for the design and the performance analysis of the algorithms for solving change detection problems and links with the analytical redundancy approach to fault detection in linear systems are established.
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Distribution of eigenvalues for some sets of random matrices

TL;DR: In this article, the authors studied the distribution of eigenvalues for two sets of random Hermitian matrices and one set of random unitary matrices in the energy spectra of disordered systems.
Journal ArticleDOI

On the distribution of the largest eigenvalue in principal components analysis

TL;DR: In this article, the authors derived the Tracey-Widom law of order 1 for large p and n matrices, where p is the largest eigenvalue of a p-variate Wishart distribution on n degrees of freedom with identity covariance.
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