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Workshop on Sparsity in Machine Learning and Statistics, Cumberland Lodge 2009

Workshop on Sparsity in Machine Learning and Statistics, Cumberland Lodge 2009

16 Videos · Apr 1, 2009

About

Sparse estimation (or sparse recovery) is playing an increasingly important role in the statistics and machine learning communities. Several methods have recently been developed in both fields, which rely upon the notion of sparsity (e.g. penalty methods like the Lasso, Dantzig selector, etc.). Many of the key theoretical ideas and statistical analysis of the methods have been developed independently, but there is increasing awareness of the potential for cross-fertilization of ideas between statistics and machine learning.

Furthermore, there are interesting links between lasso-type methods and boosting (particularly, LP-boosting); there has been a renewed interest in sparse Bayesian methods. Sparse estimation is also important in unsupervised method (sparse PCA, etc.). Recent machine learning techniques for multi-task learning and collaborative filtering have been proposed which implement sparsity constraints on matrices (rank, structured sparsity, etc.). At the same time, sparsity is playing an important role in various application fields, ranging from image and video reconstruction and compression, to speech classification, text and sound analysis, etc.

The overall goal of the workshop is to bring together machine learning researchers with statisticians working on this timely topic of research, to encourage exchange of ideas between both communities and discuss further developments and theoretical underpinning of the methods.

For detailed information visit the Workshops website.

Videos

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01:04:48

Latent Variable Sparse Bayesian Models

David P Wipf

calendar icon May 6, 2009 5738 views

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54:07

Sparsity in online multitask/multiview learning

Nicolò Cesa-Bianchi

calendar icon May 6, 2009 3221 views

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24:38

Distilled Sensing: Active sensing for sparse recovery

Rui Castro

calendar icon May 6, 2009 4822 views

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37:59

Some results for the adaptive Lasso

Sara van de Geer

calendar icon May 6, 2009 6994 views

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56:50

Phase transitions phenomenon in Compressed Sensing

Jared Tanner

calendar icon May 6, 2009 5407 views

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35:13

Poster Spotlights 1

calendar icon May 6, 2009 3692 views

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59:49

Fast methods for sparse recovery: alternatives to L1

Mike Davies

calendar icon May 6, 2009 7329 views

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01:01:49

High-Dimensional Non-Linear Variable Selection through Hierarchical Kernel Learn...

Francis R. Bach

calendar icon May 6, 2009 4412 views

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53:30

Sparse Exponential Weighting and Langevin Monte-Carlo

Alexandre Tsybakov

calendar icon May 6, 2009 3599 views

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49:46

Multi-Task Learning via Matrix Regularization

Andreas Argyriou

calendar icon May 6, 2009 3644 views

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36:48

Poster Spotlights 2

calendar icon May 6, 2009 3432 views

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31:57

Large Precision Matrix Estimation for Time Series Data with Latent Factor Model

Clifford Lam

calendar icon May 6, 2009 4519 views

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15:56

Matching Pursuit Kernel Fisher Discriminant Analysis

Tom Diethe

calendar icon May 6, 2009 3971 views

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47:37

Learning with Many Reproducing Kernel Hilbert Spaces

Ming Yuan

calendar icon May 6, 2009 4443 views

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42:37

Testing and estimation in a sparse normal means model, with connections to shape...

Jon Wellner

calendar icon May 6, 2009 2899 views

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58:23

Algorithmic Strategies for Non-convex Optimization in Sparse Learning

Tong Zhang

calendar icon May 6, 2009 7840 views

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