Maximum margin coresets for active and noise tolerant learning

IJCAI(2007)

引用 87|浏览97
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摘要
We study the problem of learning largemargin half-spaces 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.
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关键词
input data,agnostic learning,large margin coreset,maximum margin coresets,large margin coresets,active learning,direct algorithm,structured output learning,large margin,noise tolerant learning,large margin learning,true maximum margin solution,computer science,polynomial time,multi class classification
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