Bundle Methods for Machine Learning
Alexander Smola · Vishwanathan S V N · Quoc V Le

Tue Dec 4th 03:20 -- 03:30 PM @ None
We present a globally convergent method for regularized risk minimization problems. Our method applies to Support Vector estimation, regression, Gaussian Processes, and any other regularized risk minimization setting which leads to a convex optimization problem. SVMPerf can be shown to be a special case of our approach. In addition to the unified framework we present tight convergence bounds, which show that our algorithm converges in $O(1/\epsilon)$ steps to $\epsilon$ precision for general convex problems and in $O(\log \epsilon)$ steps for continuously differentiable problems. We demonstrate in experiments the performance of our approach.

Author Information

Alex Smola (Amazon - We are hiring!)

**Amazon AWS Machine Learning** We are hiring!

Vishwanathan S V N (National ICT Australia)
Quoc V Le (Stanford)

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