A deep generative model for semi-supervised classification with noisy labels
Aug 1, 2018·,,,,,·
0 min read
Maxime Langevin
Edouard Mehlman
Jeffrey Regier
Romain Lopez
Michael I. Jordan
Nir Yosef
Abstract
Class labels are often imperfectly observed, due to mistakes and to genuine ambiguity among classes. We propose a new semi-supervised deep generative model that explicitly models noisy labels, called the Mislabeled VAE (M-VAE). The M-VAE can perform better than existing deep generative models which do not account for label noise. Additionally, the derivation of M-VAE gives new theoretical insights into the popular M1+M2 semi-supervised model.
Type
Publication
Bay Area Machine Learning Symposium