Colloquium
11/10/2009 11:00 am
CoRE A (Room 301)

High Dimensional Nonlinear Learning using Local Coordinate Coding

Tong Zhang, Rutgers Statistics

Faculty Host: Michael Littman and Vladimir Pavlovic

Abstract

We present a new method for learning nonlinear functions in high   dimension using semisupervised learning. Our method includes a phase   of unsupervised basis learning and a phase of supervised function   learning. The learned bases provide a set of anchor points to form a   local coordinate system, such that each data point on a high   dimensional manifold can be locally approximated by a linear   combination of its nearby anchor points, with the linear weights   offering its local-coordinate coding.  We show that a high   dimensional nonlinear function can be approximated by a global linear   function with respect to this coding scheme, and the approximation   quality is ensured by the locality of such coding.  The method turns   a difficult nonlinear learning problem into a simple global linear   learning problem, which overcomes some drawbacks of traditional local   learning methods.  The empirical success of our method has been   demonstrated in a recent pascal image classification competition,   where the top performance was achieved by an NEC system using this   approach.

Joint work with Kai Yu at NEC Lab America

This talk is the first in our new Yahoo!-sponsored seminar Machine   Learning series.  Tong is an ideal speaker, as he joined our   statistics department from Yahoo!  In future weeks, we will have   speakers from several other departments with an interest in machine- learning topics.  See http://paul.rutgers.edu/~aweinst/mlseminar.html for the current   schedule.

A pizza lunch will be served immediately following the talk!

The series is open to the entire Rutgers community.  People outside   the CS department who wish to receive announcements should send their   email address to Ari Weinstein <shawarma@gmail.com> to be added to   our distribution list.

Organizers: Pavel Kuksa, Michael Littman, Vladimir Pavlovic, and Ari   Weinstein.

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