Limiting Laws of Coherence of Random Matrices With Applications to Testing Covariance Structure and Construction of Compressed Sensing Matrices

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Statistics Papers
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Chen–Stein method
coherence
compressed sensing matrix
covariance structure
law of large numbers
limiting distribution
maxima
moderate deviations
mutual incoherence property
random matrix
sample correlation matrix
Statistics and Probability
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Cai, T. Tony
Jiang, Tiefeng
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Testing covariance structure is of significant interest in many areas of statistical analysis and construction of compressed sensing matrices is an important problem in signal processing. Motivated by these applications, we study in this paper the limiting laws of the coherence of an n × p random matrix in the high-dimensional setting where p can be much larger than n. Both the law of large numbers and the limiting distribution are derived. We then consider testing the bandedness of the covariance matrix of a high-dimensional Gaussian distribution which includes testing for independence as a special case. The limiting laws of the coherence of the data matrix play a critical role in the construction of the test. We also apply the asymptotic results to the construction of compressed sensing matrices.

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2011-01-01
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The Annals of Statistics
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