Bayesian Neural Networks with Domain Knowledge Priors
CoRR(2024)
摘要
Bayesian neural networks (BNNs) have recently gained popularity due to their
ability to quantify model uncertainty. However, specifying a prior for BNNs
that captures relevant domain knowledge is often extremely challenging. In this
work, we propose a framework for integrating general forms of domain knowledge
(i.e., any knowledge that can be represented by a loss function) into a BNN
prior through variational inference, while enabling computationally efficient
posterior inference and sampling. Specifically, our approach results in a prior
over neural network weights that assigns high probability mass to models that
better align with our domain knowledge, leading to posterior samples that also
exhibit this behavior. We show that BNNs using our proposed domain knowledge
priors outperform those with standard priors (e.g., isotropic Gaussian,
Gaussian process), successfully incorporating diverse types of prior
information such as fairness, physics rules, and healthcare knowledge and
achieving better predictive performance. We also present techniques for
transferring the learned priors across different model architectures,
demonstrating their broad utility across various settings.
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