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calendar icon Dec 10, 2010 videos icon 7 videos
Optimization for Machine Learning

Optimization for Machine Learning

Our workshop focuses on optimization theory and practice that is relevant to machine learning. This proposal builds on precedent established by two of our previously well-received NIPS workshops: (@NIPS08) http://opt2008.kyb.tuebingen.mpg.de/ (@NIPS09) http://opt.kyb.tuebingen.mpg.de/

Both these workshops had packed (often overpacked) attendance almost throughout the day. This enthusiastic reception reflects the strong interest, relevance, and importance enjoyed by optimization in the greater ML community. One could ask why does optimization attract such continued interest? The answer is simple but telling: optimization lies at the heart of almost every ML algorithm. For some algorithms textbook methods suffice, but the majority require tailoring algorithmic tools from optimization, which in turn depends on a deeper understanding of the ML requirements. In fact, ML applications and researchers are driving some of the most cuttingedge developments in optimization today. The intimate relation of optimization with ML is the key motivation for our workshop, which aims to foster discussion, discovery, and dissemination of the state-of-the-art in optimization, especially in the context of ML. The workshop should realize its aims by: *Providing a platform for increasing the interaction between researchers from optimization, operations research, statistics, scientific computing, and machine learning; *Identifying key problems and challenges that lie at the intersection of optimization and ML; *Narrowing the gap between optimization and ML, to help reduce rediscovery, and thereby accelerating new advances.

Workshop homepage: http://opt.kyb.tuebingen.mpg.de/

Invited Talks

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53:22

Efficiency of Quasi-Newton Methods on Strictly Positive Functions

Yurii Nesterov

calendar icon Jan 13, 2011 4723 views

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53:13

Limited-memory quasi-Newton and Hessianfree Newton methods for non-smooth optimi...

Mark Schmidt

calendar icon Jan 13, 2011 7936 views

Lectures

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18:14

An Optimization Based Framework for Dynamic Batch Mode Active Learning

Shayok Chakraborty

calendar icon Jan 13, 2011 3578 views

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17:52

Augmenting Dual Decomposition for MAP Inference

André F. T. Martins

calendar icon Jan 13, 2011 4151 views

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27:33

Information-theoretic lower bounds on the oracle complexity of sparse convex opt...

Alekh Agarwal

calendar icon Jan 13, 2011 4058 views

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25:02

An Incremental Subgradient Algorithm for Approximate MAP Estimation in Graphical...

Jeremy Jancsary

calendar icon Jan 13, 2011 3629 views

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24:57

Hierarchical Classification via Orthogonal Transfer

Lin Xiao

calendar icon Jan 13, 2011 3874 views

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