Optimization for Machine Learning
BackGoogle Tech Talks March, 25 2008 ABSTRACT S.V.N. Vishwanathan - Research Scientist Regularized risk minimization is at the heart of many machine learning algorithms. The underlying objective function to be minimized is convex, and often non-smooth. Classical optimization algorithms cannot handle this efficiently. In this talk we present two algorithms for dealing with convex non-smooth objective functions. First, we extend the well known BFGS quasi-Newton algorithm to handle non-smooth functions. Second, we show how bundle methods can be applied in a machine learning context. We present both theoretical and experimental justification of our algorithms. Speaker: S.V.N. Vishwanathan - Research Scientist - Zurich S.V.N Vishwanathan is a principal researcher in the Statistical Machine Learning program, National ICT Australia with an adjunct appointment at the College of Engineering and Computer Science(CECS), Australian National University. I got my Ph.D in 2002 from the Department of Computer Science and Automation (CSA) at the Indian Institute of Science.
Channel: People & Blogs
Uploaded: March 26, 2008 at 2:12 am
Author: googletechtalks
Length: 0:55:44
Rating: 4.67
Views: 4,240
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Video Comments:
charfidil (Friday 7th of November 2008 04:36:35 PM)
I don't understand. D':
pedrohsteixeira (Sunday 7th of September 2008 04:06:54 PM)
beamer class rules :)
bansaioslo (Monday 5th of May 2008 01:15:42 PM)
nice, latex slides :)
badboy4life414 (Sunday 13th of April 2008 07:17:20 AM)
sweet little clever young maan..
How old are you and whar do you do for a living ??
regards..