Generalizing Orthogonalization for Models with Non-Linearities

David Rügamer, Chris Kolb, Tobias Weber, Lucas Kook, Thomas Nagler

Publikation: Beitrag in Buch/KonferenzbandBeitrag in Konferenzband

Abstract

The complexity of black-box algorithms can lead to various challenges, including the introduction of biases. These biases present immediate risks in the algorithms’ application. It was, for instance, shown that neural networks can deduce racial information solely from a patient’s X-ray scan, a task beyond the capability of medical experts. If this fact is not known to the medical expert, automatic decision-making based on this algorithm could lead to prescribing a treatment (purely) based on racial information. While current methodologies allow for the “orthogonalization” or “normalization” of neural networks with respect to such information, existing approaches are grounded in linear models. Our paper advances the discourse by introducing corrections for non-linearities such as ReLU activations. Our approach also encompasses scalar and tensorvalued predictions, facilitating its integration into neural network architectures. Through extensive experiments, we validate our method’s effectiveness in safeguarding sensitive data in generalized linear models, normalizing convolutional neural networks for metadata, and rectifying pre-existing embeddings for undesired attributes.
OriginalspracheEnglisch
Titel des SammelwerksForty-first International Conference on Machine Learning (ICML 24)
Untertitel des Sammelwerks Vienna, Austria, July 21 - 27, 2024
ErscheinungsortCambridge MA
VerlagML Research Press
Seitenumfang22
PublikationsstatusVeröffentlicht - 2 Mai 2024

Publikationsreihe

ReiheProceedings of Machine Learning Research
Band235

Zitat