Hyperparameter and Kernel Learning for Graph Based Semi-Supervised Classification

There have been many graph-based approaches for semi-supervised classification. One problem is that of hyperparameter learning: performance depends greatly on the hyperparameters of the similarity graph, transformation of the graph Laplacian and the noise model. We present a Bayesian framework for learning hyperparameters for graph-based semi-supervised classification. Given some labeled data, which can contain inaccurate labels, we pose the semi-supervised classification as an inference problem over the unknown labels. Expectation Propagation is used for approximate inference and the mean of the posterior is used for classification. The hyperparameters are learned using EM for evidence maximization. We also show that the posterior mean can be written in terms of the kernel matrix, providing a Bayesian classifier to classify new points. Tests on synthetic and real datasets show cases where there are significant improvements in performance over the existing approaches.

This is joint work with Yuan (Alan) Qi, Hyungil Ahn and Rosalind W. Picard

Speaker Bios

Ashish Kapoor is a PhD Student in the Affective Computing group at the MIT Media Laboratory. His research focuses on Bayesian methods in machine learning, computer vision and their applications to Affective Computing, Social Networks and HCI.

Date:
Haut-parleurs:
Ashish Kapoor
Affiliation:
MIT Media Laboratory