Learning Coordinate Covariances via Gradients

Sayan Mukherjee and Ding-Xuan Zhou

June, 2005

We introduce an algorithm that learns gradients from samples in the supervised learning framework. An error analysis is given for the convergence of the gradient estimated by the algorithm to the true gradient. The utility of the algorithm for the problem of variable selection as well as determining variable covariance is illustrated on simulated data as well as two gene expression datasets. For square loss we provide a very efficient implementation with respect to both memory and time.

Keywords: Tikhnonov regularization, Shrinkage estimate, Variable selection, Reproducing Kernel Hilbert Space, Generalization bounds.


The manuscript is available in PDF formats.