Statistical Inference for High-Dimensional Covariance Structure
Hermann Otto Hirschfeld Lectures
Presented at Humboldt-Universität zu Berlin, October 2012


Abstract: Covariance structure is of fundamental importance in many areas of statistical inference and a wide range of applications, including genomics, fMRI analysis, risk management, and web search problems. In the high dimensional setting where the dimension p can be much larger than the sample size n, classical methods and results based on fixed p and large n are no longer applicable. In these lectures, I will discuss some recent results on optimal and adaptive estimation of large covariance matrices under different settings. The results and technical analysis reveal in some cases new features that are quite different from the conventional nonparametric function estimation problems. Time permitting, I will also discuss some applications.


Papers:


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