Using Manifold Stucture for Partially Labeled Classification

Belkin, Mikhail, Niyogi, Partha

Neural Information Processing Systems 

We consider the general problem of utilizing both labeled and unlabeled datato improve classification accuracy. Under t he assumption that the data lie on a submanifold in a high dimensional space, we develop an algorithmic framework to classify a partially labeled data set in a principled manner. The central idea of our approach is that classification functions are naturally defined only on t he submanifold inquestion rather than the total ambient space. Using the Laplace Beltrami operator one produces a basis for a Hilbert space of square integrable functions on the submanifold. To recover such a basis, only unlabeled examples are required.

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