The INI has a new website!

This is a legacy webpage. Please visit the new site to ensure you are seeing up to date information.

Skip to content

SCS

Seminar

Sparse Graphs and Causal Inference

Bühlmann, P (ETH Zürich)
Friday 25 June 2010, 09:00-09:45

Seminar Room 1, Newton Institute

Abstract

Understanding cause-effect relationships between variables is of interest in many fields of science. To effectively address such questions, we need to look beyond the framework of variable selection or importance from models describing associations only. We will show how graphical modeling and intervention calculus can be used for quantifying intervention and causal effects, particularly for high-dimensional, sparse settings where the number of variables can greatly exceed sample size. Besides methodology and theory we illustrate some findings on gene intervention effects (of single gene deletions) in yeast.

Presentation

[pdf ]

Video

The video for this talk should appear here if JavaScript is enabled.
If it doesn't, something may have gone wrong with our embedded player.
We'll get it fixed as soon as possible.

Back to top ∧