Article ID Journal Published Year Pages File Type
409536 Neurocomputing 2006 9 Pages PDF
Abstract

We present a framework for efficient extrapolation of reduced rank approximations, graph kernels, and locally linear embeddings (LLE) to unseen data. We also present a principled method to combine many of these kernels and then extrapolate them. Central to our method is a theorem for matrix approximation, and an extension of the representer theorem to handle multiple joint regularization constraints. Experiments in protein classification demonstrate the feasibility of our approach.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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