In this thesis we explore different mathematical techniques for extracting information from data. In particular we focus in machine learning problems such as clustering and data cloud alignment. Both problems are intractable in the "worst case", but we show that convex relaxations can efficiently find the exact or almost exact solution for classes of "typical" instances. We study different roles that optimization techniques can play in understanding and processing data. These include efficient algorithms with mathematical guarantees, a posteriori methods for quality evaluation of solutions, and algorithmic relaxation of mathematical models. We develop probabilistic and data-driven techniques to model data and evaluate performance of algor...
This monograph presents the main mathematical ideas in convex opti-mization. Starting from the funda...
Optimization and statistics are intrinsically intertwined with each other. Optimization has been the...
In this Master’s thesis, we study the role of convexification as it is used in un- constrained optim...
In this thesis we explore different mathematical techniques for extracting information from data. In...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
In the first chapter of this thesis, we analyze the global convergence rate of a proximal quasi-Newt...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
A popular apprach for solving complex optimization problems is through relaxation: some constraints ...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
Data mining is a modern area of science dealing with the learning from given data in order to make ...
<p>The rapid growth in data availability has led to modern large scale convex optimization problems ...
Machine learning has become one of the most exciting research areas in the world, with various appli...
Nonconvex optimization naturally arises in many machine learning problems. Machine learning research...
Despite significant successes in understanding the hardness of computational problems based on stand...
We have access to great variety of datasets more than any time in the history. Everyday, more data i...
This monograph presents the main mathematical ideas in convex opti-mization. Starting from the funda...
Optimization and statistics are intrinsically intertwined with each other. Optimization has been the...
In this Master’s thesis, we study the role of convexification as it is used in un- constrained optim...
In this thesis we explore different mathematical techniques for extracting information from data. In...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
In the first chapter of this thesis, we analyze the global convergence rate of a proximal quasi-Newt...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
A popular apprach for solving complex optimization problems is through relaxation: some constraints ...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
Data mining is a modern area of science dealing with the learning from given data in order to make ...
<p>The rapid growth in data availability has led to modern large scale convex optimization problems ...
Machine learning has become one of the most exciting research areas in the world, with various appli...
Nonconvex optimization naturally arises in many machine learning problems. Machine learning research...
Despite significant successes in understanding the hardness of computational problems based on stand...
We have access to great variety of datasets more than any time in the history. Everyday, more data i...
This monograph presents the main mathematical ideas in convex opti-mization. Starting from the funda...
Optimization and statistics are intrinsically intertwined with each other. Optimization has been the...
In this Master’s thesis, we study the role of convexification as it is used in un- constrained optim...