The Sensitivity of Variational Bayesian Neural Network Performance to Hyperparameters
This work addresses the problem of unreliable uncertainty estimates in BNNs for scientific applications, offering an incremental improvement through sensitivity analysis to guide hyperparameter selection.
The study tackled the challenge of achieving accurate uncertainty quantification in Bayesian Neural Networks by analyzing how hyperparameter choices affect performance, finding that hyperparameters interact to impact both predictive accuracy and uncertainty quantification.
In scientific applications, predictive modeling is often of limited use without accurate uncertainty quantification (UQ) to indicate when a model may be extrapolating or when more data needs to be collected. Bayesian Neural Networks (BNNs) produce predictive uncertainty by propagating uncertainty in neural network (NN) weights and offer the promise of obtaining not only an accurate predictive model but also accurate UQ. However, in practice, obtaining accurate UQ with BNNs is difficult due in part to the approximations used for practical model training and in part to the need to choose a suitable set of hyperparameters; these hyperparameters outnumber those needed for traditional NNs and often have opaque effects on the results. We aim to shed light on the effects of hyperparameter choices for BNNs by performing a global sensitivity analysis of BNN performance under varying hyperparameter settings. Our results indicate that many of the hyperparameters interact with each other to affect both predictive accuracy and UQ. For improved usage of BNNs in real-world applications, we suggest that global sensitivity analysis, or related methods such as Bayesian optimization, should be used to aid in dimensionality reduction and selection of hyperparameters to ensure accurate UQ in BNNs.