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Tracy-Widom Distribution for Heterogeneous Gram Matrices With Applications in Signal Detection

Xiucai Ding, Fan Yang

2022IEEE Transactions on Information Theory17 citationsDOIOpen Access PDF

Abstract

Detection of the number of signals corrupted by high-dimensional noise is a fundamental problem in signal processing and statistics. This paper focuses on a general setting where the high-dimensional noise has an unknown complicated heterogeneous variance structure. We propose a sequential test which utilizes the edge singular values (i.e., the largest few singular values) of the data matrix. It also naturally leads to a consistent sequential testing estimate of the number of signals. We describe the asymptotic distribution of the test statistic in terms of the Tracy-Widom distribution. The test is shown to be accurate and have full power against the alternative, both theoretically and numerically. The theoretical analysis relies on establishing the Tracy-Widom law for a large class of Gram type random matrices with non-zero means and completely arbitrary variance profiles, which can be of independent interest.

Topics & Concepts

MathematicsTest statisticNoise (video)Random matrixAsymptotic distributionSingular valueDistribution (mathematics)StatisticAlgorithmMatrix (chemical analysis)Applied mathematicsSIGNAL (programming language)Statistical hypothesis testingCircular lawStatisticsRandom variableComputer scienceMathematical analysisIndependent and identically distributed random variablesEigenvalues and eigenvectorsArtificial intelligencePhysicsComposite materialProgramming languageSum of normally distributed random variablesEstimatorMaterials scienceImage (mathematics)Quantum mechanicsRandom Matrices and ApplicationsAdvanced Combinatorial MathematicsBayesian Methods and Mixture Models
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