We study the problem of learning large margin halfspaces in various settings using coresets and show that coresets are a widely applicable tool for large margin learning. A large margin coreset is a subset of the input data sufficient for approximating the true maximum margin solution. In this work, we provide a direct algorithm and analysis for constructing large margin coresets. We show various applications including a novel coreset based analysis of large margin active learning and a polynomial time (in the number of input data and the amount of noise) algorithm for agnostic learning in the presence of outlier noise. We also highlight a simple extension to multi-class classification problems and structured output learning
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
We give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assum...
We address the problem of binary linear classification with emphasis on algorithms that lead to sepa...
We study the problem of learning large margin halfspaces in various settings using coresets and show...
120 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Third, we address an importan...
We study the fundamental problem of learning an unknown large-margin half-space in the context of pa...
In this paper we show how large margin assump-tions make it possible to use ideas and algorithms fro...
We derive and analyze a new, efficient, pool-based active learning algorithm for halfspaces, called ...
<p>We present a polynomial-time noise-robust margin-based active learning algorithm to find homogene...
We present a simple noise-robust margin-based active learn-ing algorithm to find homogeneous (passin...
The concept of large margins is a unifying principle for the analysis of many different approaches t...
Learning general functional dependencies between arbitrary input and output spaces is one of the key...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
In this paper we propose a new learning algorithm for kernel classifiers. Former approaches like Qua...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
We give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assum...
We address the problem of binary linear classification with emphasis on algorithms that lead to sepa...
We study the problem of learning large margin halfspaces in various settings using coresets and show...
120 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2006.Third, we address an importan...
We study the fundamental problem of learning an unknown large-margin half-space in the context of pa...
In this paper we show how large margin assump-tions make it possible to use ideas and algorithms fro...
We derive and analyze a new, efficient, pool-based active learning algorithm for halfspaces, called ...
<p>We present a polynomial-time noise-robust margin-based active learning algorithm to find homogene...
We present a simple noise-robust margin-based active learn-ing algorithm to find homogeneous (passin...
The concept of large margins is a unifying principle for the analysis of many different approaches t...
Learning general functional dependencies between arbitrary input and output spaces is one of the key...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
Motivated by the success of large margin methods in supervised learning, maximum margin clustering (...
In this paper we propose a new learning algorithm for kernel classifiers. Former approaches like Qua...
A new incremental learning algorithm is described which approximates the maximal margin hyperplane ...
We give a new algorithm for learning intersections of halfspaces with a margin, i.e. under the assum...
We address the problem of binary linear classification with emphasis on algorithms that lead to sepa...