Peter Bartlett's Talks
-
Convex methods for classification
[Slides: pdf]
IMS Medallion Lecture. June 2008.
-
Optimism in Sequential Decision Making
[Slides: pdf]
UC Berkeley Statistics. September 2007.
-
Consistency of AdaBoost
[Slides: pdf]
Google. May 2007.
-
AdaBoost and other Large Margin Classifiers:
Convexity in Classification
[Slides: pdf]
Presented at DASP 2006. December 2006.
-
Convex methods for classification
[Slides: pdf]
-
AdaBoost and other Large Margin Classifiers:
Convexity in Classification
[Slides: ps]
Presented at the Institute
of Statistical Science, Academia
Sinica, Taipei, Taiwan., July 31, 2006.
-
AdaBoost is Universally Consistent
[Slides: ps,
pdf]
Presented at the
2006 Summer Institute
held by the Institute of Information Science (IIS), Academia Sinica,
Taipei, Taiwan., August 3, 2006.
-
Regression Methods for Pattern Classification:
Statistical Properties of Large Margin Classifiers
[Slides: ps,
pdf]
Presented at
Mathematisches Forschungsinstitut
Oberwolfach, October 16-22, 2005.
-
Empirical Minimization and Risk Bounds
[Slides: ps]
-
Statistical Properties of Large Margin Classifiers
[Slides: ps,
pdf]
-
Large Margin Classifiers: Convexity and Classification
[Slides: ps,
pdf]
-
Large Margin Methods for Structured Classification: Exponentiated
Gradient Algorithms
[Slides: ps,
ps.gz]
-
Local Rademacher Averages and Empirical Minimization
[Slides: ps,
pdf]
-
The Role of Convexity in Prediction Problems.
[Slides: ps,
ps.gz;
Handouts: ps,
ps.gz]
Presented at
UC Berkeley EECS Joint Colloquium Distinguished Lecture Series,
September 17, 2003.
-
Prediction Algorithms: Complexity, Concentration, and Convexity.
[Slides: ps,
ps.gz;
Handouts: ps,
ps.gz]
Presented at
SYSID2003: 13th IFAC Symposium on System
Identification, Rotterdam, The Netherlands, 27-29 August, 2003.
See:
Extended abstract.
-
Convexity, Classification, and Risk Bounds.
[Slides: ps,
ps.gz;
Handouts: ps,
ps.gz]
Presented at
Workshop
on Advances in Machine Learning, Montreal, Canada, June 8-11,
2003, and
AMS/IMS/SIAM Joint
Summer Research Conference on Machine Learning, Statistics, and
Discovery, Snowbird, Utah, June 22-26, 2003.
See:
Convexity, classification, and risk bounds.
Peter L. Bartlett, Michael I. Jordan and Jon D. McAuliffe.
Technical Report 638, Department of Statistics, U.C. Berkeley,
2003.
- NIPS'98 Tutorial
(an introduction to learning theory)
Last update: Mon Oct 9 23:20:27 PDT 2006