International Conference on Machine Learning (ICML 2009) in Montreal

Thursday, July 02, 2009 at 7/02/2009 04:00:00 PM



The 26th International Conference on Machine Learning (ICML 2009) was recently held in Montreal in conjunction with the 22nd Conference On Learning Theory (COLT 2009) and the 25th Conference on Uncertainty in Artificial Intelligence (UAI 2009). This is one of the major forums for researchers from both industry and academia to share the recent developments in the area of machine learning and artificial intelligence. Machine learning is a central area for Google as it has many applications in extracting useful information from a vast amount of data available on the web. In addition to sponsoring this scientific event, Google contributed intellectually to several scientific forums. Here's a short report of those activities:

  • There were ten papers co-authored by Googlers in these conferences, which covered several areas of machine learning including domain adaption, online learning, bandits, boosting, sparsity and kernel learning.
  • Corinna Cortes, the head of Google Research NY gave one of the three invited talks of ICML. She surveyed the last decade of research in learning kernels and highlighted both the successes and the failures in learning kernels with a focus on applications of convex optimization for this purpose. Corinna concluded with a call for applying new ideas and novel techniques to overcome the current obstacles.
  • We presented a tutorial on Convergence of Natural Game Dynamics. This topic has received a lot of attention recently as it stands at the conflux of many fields such as economics, machine learning and theoretical computer science. In the tutorial, we surveyed the convergence properties of the most natural game dynamics such as the Nash dynamics or the best-response dynamics to the popular no-regret learning-based dynamics. The tutorial highlighted similarities and differences between the approaches in both the time of convergence, the point of convergence, and the quality of the outcome. We believe that the influence of the learning algorithms on the behavior of the users is an exciting and intriguing topic of research for many, and in particular for the analysis of ad auctions.
Google's main mission is "to organize the world's information and make it universally accessible and useful," and machine learning plays a fundamental role in both of these aspects. As a result, Google has invested significant resources in this area of research, and we look forward to continued participation and collaboration at these conferences for many more years.

3 comments:

Antezeta said...

The links to the official Conference site are currently broken. I see the pages in Google's cache, but they seem to have been removed from McGill's site.

rks said...

I'd just like to point out the substantial overlap of interests between Google and Prof David MacKay who is head of the Inference group in the Physics dept at Cambridge. He researches and write on Inference: Information Theory, Inference, and Learning Algorithms. He is trying to help the public think clearly about energy: Sustainable Energy - without the hot air. He uses his skills to support accessibility for the disabled: http://www.inference.phy.cam.ac.uk/dasher/development/bliss/.

LB said...

How can, I find these papers? I tried to find them by searching for "google.com" on conference sites, but found only a couple of papers.