Workshop on Machine Learning, SVM and Large Scale Optimization, Thurnau 2005

Workshop on Machine Learning, SVM and Large Scale Optimization, Thurnau 2005

10 Lectures · Mar 15, 2005

About

Many modern machine learning algorithms reduce to solving large-scale linear, quadratic or semi-definite mathematical programming problems. Optimization has thus become a crucial tool for learning, and learning a major application of optimization. Furthermore, a systematic recasting of learning and estimation problems in the framework of mathematical programming has encouraged the use of advanced techniques from optimization such as convex analysis, Lagrangian duality and large scale linear algebra. This has allowed much sharper theoretical analyses, and greatly increased the size and range of problems that can be handled. Several key application domains have developed explosively, notably text and web analysis, machine vision, and speech all fuelled by ever expanding data resources easily accessible via the web.

This special topic is intended to bring closer optimization and machine learning communities for further algorithmic progress, particularly for developing large-scale learning methods capable of handling massive document and image datasets.

Topics of interest include:

* Mathematical programming approaches to machine learning problems, like semi-definite programming, interior point methods, sequential convex programming, gradient-based methods, etc.
* Optimisation on graphical models for machine learning, belief propagation.
* Efficient training of Support Vector Machines, incremental SVMs, optimization over kernels.
* Convex relaxations of machine learning problems.
* Applications involving large scale databases, such as data mining, bioinformatics, multimedia. 

Find out more at the workshop website.

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Uploaded videos:

Lectures

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59:21

Introduction to convex programming, interior point methods, and semi-definite pr...

Arkadi Nemirovski

Feb 25, 2007

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10376 Views

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26:19

Convex transduction with the normalized cut

Tijl De Bie

Feb 25, 2007

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3477 Views

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47:37

Invariance in kernel methods - distance and integration kernels

Bernard Haasdonk

Feb 25, 2007

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4377 Views

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33:21

Integrating two features or kernels within one SVM classifier

Hongying Meng

Feb 25, 2007

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4362 Views

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40:29

Learning structured data via flow represented actions of support vector machines

Sandor Szedmak

Feb 25, 2007

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4040 Views

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40:46

ν-MCD approach to novelty detection

Alexander N. Dolia

Feb 25, 2007

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3200 Views

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40:51

Kernel-based learning of hierarchial multilabel classification models

Juho Rousu

Feb 25, 2007

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3286 Views

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12:05

Data analysis and support vector machines in recognition of sleep stages

Audrius Varoneckas

Feb 25, 2007

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33:22

Learning interpretable SVMs for biological sequence classification

Sören Sonnenburg

Feb 25, 2007

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4635 Views

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48:35

Tricks of the trade for training SVMs

Gökhan H. Bakir

Feb 25, 2007

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5667 Views

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