Abstract
Monotonicity constraints are powerful regular-izers in statistical modelling. They can support fairness in computer-aided decision making and increase plausibility in data-driven scientific models. The seminal min-max (MM) neural network architecture ensures monotonicity, but often gets stuck in undesired local optima during training because of partial derivatives of the MM nonlinearities being zero. We propose a simple modification of the MM network using strictly-increasing smooth minimum and maximum functions that alleviates this problem. The resulting smooth min-max (SMM) network module inherits the asymptotic approximation properties from the MM architecture. It can be used within larger deep learning systems trained end-to-end. The SMM module is conceptually simple and computationally less demanding than state-of-the-art neural networks for monotonic modelling. Our experiments show that this does not come with a loss in generalization performance compared to alternative neural and non-neural approaches.
| Original language | English |
|---|---|
| Journal | Proceedings of Machine Learning Research |
| Volume | 235 |
| Pages (from-to) | 20908-20923 |
| Number of pages | 16 |
| ISSN | 2640-3498 |
| Publication status | Published - 2024 |
| Event | 41st International Conference on Machine Learning, ICML 2024 - Vienna, Austria Duration: 21 Jul 2024 → 27 Jul 2024 |
Conference
| Conference | 41st International Conference on Machine Learning, ICML 2024 |
|---|---|
| Country/Territory | Austria |
| City | Vienna |
| Period | 21/07/2024 → 27/07/2024 |
Bibliographical note
Publisher Copyright:Copyright 2024 by the author(s)
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