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Output-Constrained Bayesian Neural Networks

15 May 2019
Wanqian Yang
Lars Lorch
Moritz Graule
Srivatsan Srinivasan
Anirudh Suresh
Jiayu Yao
Melanie F. Pradier
Finale Doshi-Velez
    UQCV
    BDL
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Abstract

Bayesian neural network (BNN) priors are defined in parameter space, making it hard to encode prior knowledge expressed in function space. We formulate a prior that incorporates functional constraints about what the output can or cannot be in regions of the input space. Output-Constrained BNNs (OC-BNN) represent an interpretable approach of enforcing a range of constraints, fully consistent with the Bayesian framework and amenable to black-box inference. We demonstrate how OC-BNNs improve model robustness and prevent the prediction of infeasible outputs in two real-world applications of healthcare and robotics.

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