Open Peer Review. Open Publishing. Open Access. Open Discussion. Open Directory. Open Recommendations. Open API. Open Source.
Multi-view Generative Adversarial Networks
Mickaël Chen, Ludovic Denoyer
Nov 04, 2016 (modified: Dec 07, 2016)ICLR 2017 conference submissionreaders: everyone
Abstract:Learning over multi-view data is a challenging problem with strong practical applications. Most related studies focus on the classification point of view and assume that all the views are available at any time. We consider an extension of this framework in two directions. First, based on the BiGAN model, the Multi-view BiGAN (MV-BiGAN) is able to perform density estimation from multi-view inputs. Second, it can deal with missing views and is able to update its prediction when additional views are provided. We illustrate these properties on a set of experiments over different datasets.
TL;DR:We describe the MV-BiGAN model able to perform density estimation from multiple views, and to update its prediction when additional views are provided
Keywords:Deep learning, Supervised Learning
Enter your feedback below and we'll get back to you as soon as possible.