Trevor Hastie
2004-Jan-07 23:10 UTC
[R] Statistical Learning and Datamining course based on R/Splus tools
Short course: Statistical Learning and Data Mining Trevor Hastie and Robert Tibshirani, Stanford University Sheraton Hotel Palo Alto, CA Feb 26-27, 2004 This two-day course gives a detailed overview of statistical models for data mining, inference and prediction. With the rapid developments in internet technology, genomics and other high-tech industries, we rely increasingly more on data analysis and statistical models to exploit the vast amounts of data at our fingertips. This sequel to our popular "Modern Regression and Classification" course covers many new areas of unsupervised learning and data mining, and gives an in-depth treatment of some of the hottest tools in supervised learning. The first course is not a prerequisite for this new course. All of the techniques discussed in the course are implemented by the authors and others in the S language (S-plus or R). Day one focuses on state-of-art methods for supervised learning, including PRIM, boosting, support vector machines, and very recent work on least angle regression and the lasso. Day two covers unsupervised learning, including clustering, principal components, principal curves and self-organizing maps. Many applications will be discussed, including the analysis of DNA expression arrays - one of the hottest new areas in biology! ################################################### Much of the material is based on the book: Elements of Statistical Learning: data mining, inference and prediction Hastie, Tibshirani & Friedman, Springer-Verlag, 2001 http://www-stat.stanford.edu/ElemStatLearn/ A copy of this book will be given to all attendees. ################################################### For more information, and to register, visit the course homepage: http://www-stat.stanford.edu/~hastie/mrc.html -------------------------------------------------------------------- Trevor Hastie hastie@stanford.edu Professor, Department of Statistics, Stanford University Phone: (650) 725-2231 (Statistics) Fax: (650) 725-8977 (650) 498-5233 (Biostatistics) Fax: (650) 725-6951 URL: http://www-stat.stanford.edu/~hastie address: room 104, Department of Statistics, Sequoia Hall 390 Serra Mall, Stanford University, CA 94305-4065 -------------------------------------------------------------------- [[alternative HTML version deleted]]