In this thesis we consider concentration inequalities and the concentration of measure phenomenon from a variety of angles. Sharp tail bounds on the deviation of Lipschitz functions of independent random variables about their mean are well known. We consider variations on this theme for dependent variables on the Boolean cube. In recent years negatively associated probability distributions have been studied as potential generalizations of independent random variables. Results on this class of distributions have been sparse at best, even when restricting to the Boolean cube. We consider the class of negatively associated distributions topologically, as a subset of the general class of probability measures. Both the weak (distributional) ...
The maximum a-posteriori (MAP) perturbation framework has emerged as a useful approach for inference...
Pipage rounding is a dependent random sampling technique that has several interesting properties and...
We present a new general concentration-of-measure inequality and illustrate its power by application...
Concentration inequalities deal with deviations of functions of independent random variables from th...
Concentration inequalities deal with deviations of functions of independent random variables from th...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
We derive Concentration of Measure (CoM) inequalities for randomized Toeplitz matrices. These inequa...
The maximum a-posteriori (MAP) perturbation framework has emerged as a useful approach for inference...
Cette thèse a pour principal objectif d'introduire des bases probabilistes tirées de la théorie de l...
We present a new general concentration-of-measure inequality and illustrate its power by applicatio...
The main objective of this thesis is to introduce a probabilistic framework taken from the theory of...
Abstract — In this paper, we derive concentration of measure inequalities for compressive Toeplitz m...
Abstract. The purpose of this note is to present several aspects of concentration phenomena in high ...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
The maximum a-posteriori (MAP) perturbation framework has emerged as a useful approach for inference...
Pipage rounding is a dependent random sampling technique that has several interesting properties and...
We present a new general concentration-of-measure inequality and illustrate its power by application...
Concentration inequalities deal with deviations of functions of independent random variables from th...
Concentration inequalities deal with deviations of functions of independent random variables from th...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
We derive Concentration of Measure (CoM) inequalities for randomized Toeplitz matrices. These inequa...
The maximum a-posteriori (MAP) perturbation framework has emerged as a useful approach for inference...
Cette thèse a pour principal objectif d'introduire des bases probabilistes tirées de la théorie de l...
We present a new general concentration-of-measure inequality and illustrate its power by applicatio...
The main objective of this thesis is to introduce a probabilistic framework taken from the theory of...
Abstract — In this paper, we derive concentration of measure inequalities for compressive Toeplitz m...
Abstract. The purpose of this note is to present several aspects of concentration phenomena in high ...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
The concentrations of measure phenomena were discovered as the mathematical background to statistica...
The maximum a-posteriori (MAP) perturbation framework has emerged as a useful approach for inference...
Pipage rounding is a dependent random sampling technique that has several interesting properties and...
We present a new general concentration-of-measure inequality and illustrate its power by application...