Workshop on Probabilistic Modeling and Machine Learning in Structural and Systems Biology (PMSB), Tuusula 2006

Workshop on Probabilistic Modeling and Machine Learning in Structural and Systems Biology (PMSB), Tuusula 2006

20 Lectures · Jun 16, 2006

About

Motivation

The ever-ongoing growth in the amount of biological data, the development of genome-wide measurement technologies, and the shift from the study of individual genes to systems view all contribute to the need to develop computational techniques for learning models from data. At the same time, the increase in available computational resources has enabled new, more realistic modeling methods to be adopted.

In bioinformatics, most of the targets of interest deal with complex structured objects: sequences, 2D and 3D structures or interaction networks. In many cases these structures are naturally described by probabilistic graphical models, such as Hidden Markov Models, Conditional Random Fields or Bayesian Networks. Recently, approaches that combine Support Vector Machines and probabilistic models have been introduced (Fisher kernels, Max-margin Markov Networks, Structured SVM). These techniques benefit from efficient convex optimization approaches and thus are potentially well-scalable to large problems in bioinformatics.

The increasing amount of high-throughput experimental data begins to enable the use of these advanced modelling methods in bioinformatics and systems biology. At the same time new computational challenges emerge. Statistical methods are required to process the data so that underlying potentially complex statistical patterns can be discerned from spurious patterns created by random effects. At its simplest this problem calls for data normalization and statistical hypothesis testing, in the more general case, one is required to select a model (e.g. gene network) that best explains the data.

Objective

The aim of this workshop is to provide a broad look at the state of the art in the probabilistic modeling and machine learning methods involving biological structures and systems, and to bring together method developers and experimentalists working with the problems.

We encourage submissions bringing forward methods for discovering complex structures (e.g. interaction networks, molecule/cellular structures) and methods supporting genome-wide data analysis.

Find out more at the workshop website.

Related categories

Uploaded videos:

Invited talks

video-img
47:46

Game theoretic models in molecular biology

Tommi Jaakkola

Feb 25, 2007

 · 

8208 Views

Invited Talk
video-img
02:27

Introduction and welcome

Juho Rousu

Apr 15, 2007

 · 

2676 Views

Introduction
video-img
52:00

Probabilistic Inference for Graph Classification

Koji Tsuda

Feb 25, 2007

 · 

6549 Views

Invited Talk
video-img
44:12

The Challenge of Predicting Gene Function

Ross D. King

Feb 25, 2007

 · 

3664 Views

Invited Talk
video-img
46:43

Lost in Translation from Genes to Organisms

Jukka Jernvall

Feb 25, 2007

 · 

5107 Views

Invited Talk

Lectures

video-img
26:38

Improving the Caenorhabditis elegans Genome Annotation using Machine Learning

Gunnar Rätsch

Feb 25, 2007

 · 

3750 Views

Lecture
video-img
24:37

Constrained Hidden Markov Models for Population-based Haplotyping

Niels Landwehr

Feb 25, 2007

 · 

5049 Views

Lecture
video-img
24:12

Estimation of human endogeneous retrovirus activities from expressed sequence da...

Merja Oja

Feb 25, 2007

 · 

4456 Views

Lecture
video-img
27:13

Predicting co-evolving pairs in Pfam using information theory where entropy is d...

Scooter Willis

Feb 25, 2007

 · 

3328 Views

Lecture
video-img
28:25

Model based identification of transcription factor activity from microarray data

Simon Rogers

Feb 25, 2007

 · 

5442 Views

Lecture
video-img
21:58

Mutual Spectral Clustering: Microarray Experiments Versus Text Corpus

Kristiaan Pelckmans

Feb 25, 2007

 · 

4171 Views

Lecture
video-img
33:55

Improved Functional Prediction of Proteins by Learning Kernel Combinations in Mu...

Volker Roth

Feb 25, 2007

 · 

3231 Views

Lecture
video-img
27:09

Hierarchical Multilabel Classification Trees for Gene Function Prediction

Leander Schietgat

Feb 25, 2007

 · 

4565 Views

Lecture
video-img
27:01

Context dependent visualization of protein function

Peddinti V. Gopalacharyulu

Feb 25, 2007

 · 

4065 Views

Lecture
video-img
26:45

Objective Bayesian Nets for Breast Cancer Prognosis

Sylvia Nagl

Feb 25, 2007

 · 

5974 Views

Lecture
video-img
32:10

Bayesian Data Fusion with Gaussian Process Priors : An Application to Protein Fo...

Mark Girolami

Feb 25, 2007

 · 

7549 Views

Lecture
video-img
24:53

RNA Structure Prediction Including Pseudoknots Based on Stochastic Multiple Cont...

Yuki Kato

Feb 25, 2007

 · 

3675 Views

Lecture
video-img
38:44

Completion of biological networks : the output kernel trees approach

Florence d'Alche-Buc

Apr 15, 2007

 · 

6493 Views

Lecture
video-img
09:47

Part 1: A Novel Bayesian Approach for Uncovering Potential Spectroscopic Counter...

Mika Ala-Korpela

Feb 25, 2007

 · 

4761 Views

Lecture
video-img
19:57

Part 2: A Novel Bayesian Approach for Uncovering Potential Spectroscopic Counter...

Ville-Petteri Mäkinen

Apr 15, 2007

 · 

4504 Views

Lecture