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A New PHO-Rmula for Improved Performance of Semi-Structured Networks

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David Rügamer

Prof. Dr.

Principal Investigator

Abstract

Recent advances to combine structured regression models and deep neural networks for better interpretability, more expressiveness, and statistically valid uncertainty quantification demonstrate the versatility of semi-structured neural networks (SSNs). We show that techniques to properly identify the contributions of the different model components in SSNs, however, lead to suboptimal network estimation, slower convergence, and degenerated or erroneous predictions. In order to solve these problems while preserving favorable model properties, we propose a non-invasive post-hoc orthogonalization (PHO) that guarantees identifiability of model components and provides better estimation and prediction quality. Our theoretical findings are supported by numerical experiments, a benchmark comparison as well as a real-world application to COVID-19 infections.

inproceedings


ICML 2023

40th International Conference on Machine Learning. Honolulu, Hawaii, Jul 23-29, 2023.
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Authors

D. Rügamer

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Research Area

 A1 | Statistical Foundations & Explainability

BibTeXKey: Rue23

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