Consistency of semi-supervised learning algorithms on graphs: Probit and one-hot methods
Hoffmann, Franca, Hosseini, Bamdad, Ren, Zhi, Stuart, Andrew M.
Graph-based semi-supervised learning is the problem of propagating labels from a small number of labelled data points to a larger set of unlabelled data. This paper is concerned with the consistency of optimization-based techniques for such problems, in the limit where the labels have small noise and the underlying unlabelled data is well clustered. We study graph-based probit for binary classification, and a natural generalization of this method to multi-class classification using one-hot encoding. The resulting objective function to be optimized comprises the sum of a quadratic form defined through a rational function of the graph Laplacian, involving only the unlabelled data, and a fidelity term involving only the labelled data.
Jun-18-2019
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- Research Report > New Finding (0.46)
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