A wide variety of machine learning problems can be described as minimizing a regularized risk functional, with different algorithms using different notions of risk and different regularizers. Examples include linear Support Vector Machines (SVMs), Logistic Regression, Conditional Random Fields (CRFs), and Lasso amongst others. This paper describes the theory and implementation of a highly scalable and modular convex solver which solves all these estimation problems. It can be parallelized on a cluster of workstations, allows for data-locality, and can deal with regularizers such as l1 and l2 penalties. At present, our solver implements 20 different estimation problems, can be easily extended, scales to millions of observations, and is up to...
Regularization techniques have become a principled tool for model-based statistics and artificial in...
We consider the problem of supervised learning with convex loss functions and propose a new form of ...
In regularized risk minimization, the associated optimization problem becomes particularly difficult...
A wide variety of machine learning problems can be de-scribed as minimizing a regularized risk funct...
We present a globally convergent method for regularized risk minimization prob-lems. Our method appl...
Abstract. Many machine learning algorithms lead to solving a convex regularized risk minimization pr...
We establish risk bounds for Regularized Empirical Risk Minimizers (RERM) when the loss is Lipschitz...
The scale of modern datasets necessitates the development of efficient distributed and parallel opti...
Statistical modeling with regularized risk minimization Given some data points xi, i = 1,..., n, lea...
Thesis (Ph.D.)--University of Washington, 2016-08Design and analysis of tractable methods for estima...
Supervised learning in general and regularized risk minimization in particular is about solving opti...
Modern machine learning systems pose several new statistical, scalability, privacy and ethical chall...
The scale of modern datasets necessitates the development of efficient distributed optimization meth...
The topic of this dissertation is based on regularization methods and efficient solution path algori...
We present a new algorithm for minimizing a convex loss-function subject to regularization. Our fram...
Regularization techniques have become a principled tool for model-based statistics and artificial in...
We consider the problem of supervised learning with convex loss functions and propose a new form of ...
In regularized risk minimization, the associated optimization problem becomes particularly difficult...
A wide variety of machine learning problems can be de-scribed as minimizing a regularized risk funct...
We present a globally convergent method for regularized risk minimization prob-lems. Our method appl...
Abstract. Many machine learning algorithms lead to solving a convex regularized risk minimization pr...
We establish risk bounds for Regularized Empirical Risk Minimizers (RERM) when the loss is Lipschitz...
The scale of modern datasets necessitates the development of efficient distributed and parallel opti...
Statistical modeling with regularized risk minimization Given some data points xi, i = 1,..., n, lea...
Thesis (Ph.D.)--University of Washington, 2016-08Design and analysis of tractable methods for estima...
Supervised learning in general and regularized risk minimization in particular is about solving opti...
Modern machine learning systems pose several new statistical, scalability, privacy and ethical chall...
The scale of modern datasets necessitates the development of efficient distributed optimization meth...
The topic of this dissertation is based on regularization methods and efficient solution path algori...
We present a new algorithm for minimizing a convex loss-function subject to regularization. Our fram...
Regularization techniques have become a principled tool for model-based statistics and artificial in...
We consider the problem of supervised learning with convex loss functions and propose a new form of ...
In regularized risk minimization, the associated optimization problem becomes particularly difficult...