Bayesian Inference with Anchored Ensembles of Neural Networks, and Application to Reinforcement Learning

Pearce, Tim, Anastassacos, Nicolas, Zaki, Mohamed, Neely, Andy

arXiv.org Artificial Intelligence 

The use of ensembles of neural networks (NNs) for the quantification of predictive uncertainty is widespread. However, the current justification is intuitive rather than analytical. This work proposes one minor modification to the normal ensembling methodology, which we prove allows the ensemble to perform Bayesian inference, hence converging to the corresponding Gaussian Process as both the total number of NNs, and the size of each, tend to infinity. This working paper provides early-stage results in a reinforcement learning setting, analysing the practicality of the technique for an ensemble of small, finite number. Using the uncertainty estimates they produce to govern the exploration-exploitation process results in steadier, more stable learning.

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