We first describe a general class of optimization problems that describe many natu- ral, economic, and statistical phenomena. After noting the existence of a conserved quantity in a transformed coordinate system, we outline several instances of these problems in statistical physics, facility allocation, and machine learning. A dynamic description and statement of a partial inverse problem follow. When attempting to optimize the state of a system governed by the generalized equipartitioning princi- ple, it is vital to understand the nature of the governing probability distribution. We show that optimiziation for the incorrect probability distribution can have catas- trophic results, e.g., infinite expected cost, and describe a method for con...
Statistical Mechanics has gained a central role in modern Inference and Computer Science. Many optim...
This dissertation consists of three chapters that focus on the nonparametric method on time-varying ...
Bayesian predictive methods have a number of advantages over traditional statistical methods. For o...
Nowadays, typical methodologies employed in statistical physics are successfully applied to a huge s...
Distributional functionals are integrals of functionals of probability densities and include functio...
Machine learning has recently witnessed revolutionary success in a wide spectrum of domains. The lea...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
We propose a formulation of a distributionally robust approach to model certain structural informat...
This dissertation proposes and investigates the use of mathematical programming techniques to solve ...
We present a theory of population based optimization methods using approximations of search distribu...
This survey describes a general approach to a class of problems that arise in combinatorial probabil...
The paper has two major themes. The first part of the paper establishes certain general results for ...
AbstractWe present a theory of population based optimization methods using approximations of search ...
The problem of learning from data is prevalent in the modern scientific age, and optimization provid...
Statistical Mechanics has gained a central role in modern Inference and Computer Science. Many optim...
This dissertation consists of three chapters that focus on the nonparametric method on time-varying ...
Bayesian predictive methods have a number of advantages over traditional statistical methods. For o...
Nowadays, typical methodologies employed in statistical physics are successfully applied to a huge s...
Distributional functionals are integrals of functionals of probability densities and include functio...
Machine learning has recently witnessed revolutionary success in a wide spectrum of domains. The lea...
In the field of optimization using probabilistic models of the search space, this thesis identifies ...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
We propose a formulation of a distributionally robust approach to model certain structural informat...
This dissertation proposes and investigates the use of mathematical programming techniques to solve ...
We present a theory of population based optimization methods using approximations of search distribu...
This survey describes a general approach to a class of problems that arise in combinatorial probabil...
The paper has two major themes. The first part of the paper establishes certain general results for ...
AbstractWe present a theory of population based optimization methods using approximations of search ...
The problem of learning from data is prevalent in the modern scientific age, and optimization provid...
Statistical Mechanics has gained a central role in modern Inference and Computer Science. Many optim...
This dissertation consists of three chapters that focus on the nonparametric method on time-varying ...
Bayesian predictive methods have a number of advantages over traditional statistical methods. For o...