Multi-Source Neural Variational Inference
Abstract
Learning from multiple sources of information is an important problem in machine-learning research. The key challenges are learning representations and formulating inference methods that take into account the complementarity and redundancy of various information sources. In this paper we formulate a variational autoencoder based multi-source learning framework in which each encoder is conditioned on a different information source. This allows us to relate the sources via the shared latent variables by computing divergence measures between individual source's posterior approximations. We explore a variety of options to learn these encoders and to integrate the beliefs they compute into a consistent posterior approximation. We visualise learned beliefs on a toy dataset and evaluate our methods for learning shared representations and structured output prediction, showing trade-offs of learning separate encoders for each information source. Furthermore, we demonstrate how conflict detection and redundancy can increase robustness of inference in a multi-source setting.
Cite
@article{arxiv.1811.04451,
title = {Multi-Source Neural Variational Inference},
author = {Richard Kurle and Stephan Günnemann and Patrick van der Smagt},
journal= {arXiv preprint arXiv:1811.04451},
year = {2018}
}
Comments
AAAI 2019, Association for the Advancement of Artificial Intelligence (AAAI) 2019