Spectral methods for unsupervised ensemble learning and latent variable models
With the availability of huge amounts of unlabeled data, unsupervised learning methods are gaining increasing popularity and importance. We focus on ”unsupervised ensemble learning”, where one obtains the predictions of multiple classifiers over a set of unlabeled instances. The classifiers may be human experts as in crowdsourcing, or prediction algorithms …