Multimodal Generative Models for Scalable Weakly-Supervised Learning

Mike Wu, Noah Goodman

Neural Information Processing Systems 

Learning a joint representation of these modalities should yield deeper and more useful representations. Previous generative approaches to multi-modal input either do not learn a joint distribution or require additional computation to handle missing data. Here, we introduce a multimodal variational autoencoder (MVAE) that uses a product-of-experts inference network and a sub-sampled training paradigm to solve the multi-modal inference problem. Notably, our model shares parameters to efficiently learn under any combination of missing modalities. We apply the MVAE on four datasets and match state-of-the-art performance using many fewer parameters. In addition, we show that the MVAE is directly applicable to weaklysupervised learning, and is robust to incomplete supervision. We then consider two case studies, one of learning image transformations--edge detection, colorization, segmentation--as a set of modalities, followed by one of machine translation between two languages. We find appealing results across this range of tasks.