Variational Auto-Regressive Gaussian Processes for Continual Learning
Abstract
Through sequential construction of posteriors on observing data online, Bayes' theorem provides a natural framework for continual learning. We develop Variational Auto-Regressive Gaussian Processes (VAR-GPs), a principled posterior updating mechanism to solve sequential tasks in continual learning. By relying on sparse inducing point approximations for scalable posteriors, we propose a novel auto-regressive variational distribution which reveals two fruitful connections to existing results in Bayesian inference, expectation propagation and orthogonal inducing points. Mean predictive entropy estimates show VAR-GPs prevent catastrophic forgetting, which is empirically supported by strong performance on modern continual learning benchmarks against competitive baselines. A thorough ablation study demonstrates the efficacy of our modeling choices.
Cite
@article{arxiv.2006.05468,
title = {Variational Auto-Regressive Gaussian Processes for Continual Learning},
author = {Sanyam Kapoor and Theofanis Karaletsos and Thang D. Bui},
journal= {arXiv preprint arXiv:2006.05468},
year = {2021}
}
Comments
International Conference on Machine Learning (ICML), 2021