Publication | Closed Access
Continual Learning with Bayesian Neural Networks for Non-Stationary Data
36
Citations
34
References
2020
Year
Artificial IntelligenceContinual LearningIncremental LearningIntelligent Information ProcessingEngineeringMachine LearningData ScienceConcept DriftBayesian Neural NetworksData Stream MiningSequential LearningBayesian ForgettingComputer ScienceGaussian Diffusion ProcessDeep LearningBayesian Inference
This work addresses continual learning for non-stationary data, using Bayesian neural networks and memory-based online variational Bayes. We represent the posterior approximation of the network weights by a diagonal Gaussian distribution and a complementary memory of raw data. This raw data corresponds to likelihood terms that cannot be well approximated by the Gaussian. We introduce a novel method for sequentially updating both components of the posterior approximation. Furthermore, we propose Bayesian forgetting and a Gaussian diffusion process for adapting to non-stationary data. The experimental results show that our update method improves on existing approaches for streaming data. Additionally, the adaptation methods lead to better predictive performance for non-stationary data.
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