Several learning algorithms in classification and structured prediction are formulated as large scale optimization problems. We show that a generic iterative reformulation and resolving strategy based on the progressive hedging algorithm from stochastic programming results in a highly parallel algorithm when applied to the large margin classification problem with nonlinear kernels. We also underline promising aspects of the available analysis of progressive hedging strategies
Abstract. Support vector machines (SVMs) and Boosting are possibly the two most popular learning app...
In this paper we embed evolutionary computation into statistical learning theory. First, we outline...
We study the fundamental problem of learning an unknown large-margin half-space in the context of pa...
Several learning algorithms in classification and structured prediction are formu-lated as large sca...
We address the problem of binary linear classification with emphasis on algorithms that lead to sepa...
We address the problem of binary linear classification with emphasis on algorithms that lead to sepa...
We present a new class of perceptron-like algorithms with margin in which the “effective” learning r...
The progressive hedging algorithm minimizes an expected "cost" by iteratively decomposing into s...
University of Minnesota Ph.D. dissertation. April 2020. Major: Computer Science. Advisor: Arindam Ba...
This work presents a general parallelisation of the Progressive Hedging algorithm to coordinate the ...
Recent advances in machine learning make it possible to design efficient prediction algorithms for d...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
We present an algorithmic framework for supervised classification learning where the set of labels i...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane w...
Hierarchical classification (HC) plays an significant role in machine learning and data mining. Howe...
Abstract. Support vector machines (SVMs) and Boosting are possibly the two most popular learning app...
In this paper we embed evolutionary computation into statistical learning theory. First, we outline...
We study the fundamental problem of learning an unknown large-margin half-space in the context of pa...
Several learning algorithms in classification and structured prediction are formu-lated as large sca...
We address the problem of binary linear classification with emphasis on algorithms that lead to sepa...
We address the problem of binary linear classification with emphasis on algorithms that lead to sepa...
We present a new class of perceptron-like algorithms with margin in which the “effective” learning r...
The progressive hedging algorithm minimizes an expected "cost" by iteratively decomposing into s...
University of Minnesota Ph.D. dissertation. April 2020. Major: Computer Science. Advisor: Arindam Ba...
This work presents a general parallelisation of the Progressive Hedging algorithm to coordinate the ...
Recent advances in machine learning make it possible to design efficient prediction algorithms for d...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
We present an algorithmic framework for supervised classification learning where the set of labels i...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane w...
Hierarchical classification (HC) plays an significant role in machine learning and data mining. Howe...
Abstract. Support vector machines (SVMs) and Boosting are possibly the two most popular learning app...
In this paper we embed evolutionary computation into statistical learning theory. First, we outline...
We study the fundamental problem of learning an unknown large-margin half-space in the context of pa...