ICML 2024
Improving Neural Additive Models with Bayesian Principles
Abstract
Neural additive models (NAMs) enhance the transparency of deep neural networks by handling input features in separate additive sub-networks. However, they lack inherent mechanisms that provide calibrated uncertainties and enable selection of relevant features and interactions. Approaching NAMs from a Bayesian perspective, we augment them in three primary ways, namely by a) providing credible intervals for the individual additive sub-networks; b) estimating the marginal likelihood to perform an implicit selection of features via an empirical Bayes procedure; and c) facilitating the ranking of feature pairs as candidates for second-order interaction in fine-tuned models. In particular, we develop Laplace-approximated NAMs (LA-NAMs), which show improved empirical performance on tabular datasets and challenging real-world medical tasks.
Authors
Keywords
No keywords are indexed for this paper.
Context
- Venue
- International Conference on Machine Learning
- Archive span
- 1993-2025
- Indexed papers
- 16471
- Paper id
- 785769092152846794