MLLGNANADec 20, 2012

Variational Optimization

arXiv:1212.450760 citationsh-index: 32

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We discuss a general technique that can be used to form a differentiable bound on the optima of non-differentiable or discrete objective functions. We form a unified description of these methods and consider under which circumstances the bound is concave. In particular we consider two concrete applications of the method, namely sparse learning and support vector classification.

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