Revision as of 23:46, 17 April 2008 by Lbachega (Talk)

Consider a collection of sample points $ \{x_1,x_2,\cdots,x_n\} $ where $ x_i \in R^m $. We divide the methods in two categories:

  • Outer Characteristics of the point cloud: These methods require the spectral analysis of a positive definite kernel of dimension m, the extrinsic dimensionality of the data.
  • Inner characteristics of the point cloud: These methods require the spectral analysis of a positive definite kernel of dimension n, the number of samples in the sample cloud.


Outer Characteristics of the point cloud Methods

Inner characteristics of the point cloud Methods

Alumni Liaison

has a message for current ECE438 students.

Sean Hu, ECE PhD 2009