The diverse world of machine learning applications has given rise to a plethora of algorithms and optimization methods, finely tuned to the specific regression or classification task at hand. We reduce the complexity of algorithm design for machine learning by reductions: we develop reductions that take a method developed for one setting and apply it to the entire spectrum of smoothness and strong-convexity in applications. Furthermore, unlike existing results, our new reductions are optimal and more practical. We show how these new reductions give rise to new and faster running times on training linear classifiers for various families of loss functions, and conclude with experiments showing their successes also in practice
We aim to design universal algorithms for online convex optimization, which can handle multiple comm...
Machine learning is a technology developed for extracting predictive models from data so as to be ...
We derive a general Convex Linearly Con-strained Program (CLCP) parameterized by a matrix G, constru...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
This monograph presents the main mathematical ideas in convex opti-mization. Starting from the funda...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
Robustness of machine learning, often referring to securing performance on different data, is always...
<p>The rapid growth in data availability has led to modern large scale convex optimization problems ...
Abstract We introduce the idea that using optimal classification trees (OCTs) and opt...
The idea behind creating artificial intelligence extends far back in human history, founded on the i...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
We aim to design universal algorithms for online convex optimization, which can handle multiple comm...
Machine learning is a technology developed for extracting predictive models from data so as to be ...
We derive a general Convex Linearly Con-strained Program (CLCP) parameterized by a matrix G, constru...
Classical optimization techniques have found widespread use in machine learning. Convex optimization...
Thesis: Ph. D. in Mathematics and Operations Research, Massachusetts Institute of Technology, Depart...
This monograph presents the main mathematical ideas in convex opti-mization. Starting from the funda...
The dissertation addresses the research topics of machine learning outlined below. We developed the ...
Optimization and machine learning are both extremely active research topics. In this thesis, we expl...
In the past decade, neural networks have demonstrated impressive performance in supervised learning....
Robustness of machine learning, often referring to securing performance on different data, is always...
<p>The rapid growth in data availability has led to modern large scale convex optimization problems ...
Abstract We introduce the idea that using optimal classification trees (OCTs) and opt...
The idea behind creating artificial intelligence extends far back in human history, founded on the i...
International audienceExisting studies in black-box optimization for machine learning suffer from lo...
We aim to design universal algorithms for online convex optimization, which can handle multiple comm...
Machine learning is a technology developed for extracting predictive models from data so as to be ...
We derive a general Convex Linearly Con-strained Program (CLCP) parameterized by a matrix G, constru...