Back to Search Start Over

Not Only the Last-Layer Features for Spurious Correlations: All Layer Deep Feature Reweighting

Authors :
Hameed, Humza Wajid
Nanfack, Geraldin
Belilovsky, Eugene
Publication Year :
2024

Abstract

Spurious correlations are a major source of errors for machine learning models, in particular when aiming for group-level fairness. It has been recently shown that a powerful approach to combat spurious correlations is to re-train the last layer on a balanced validation dataset, isolating robust features for the predictor. However, key attributes can sometimes be discarded by neural networks towards the last layer. In this work, we thus consider retraining a classifier on a set of features derived from all layers. We utilize a recently proposed feature selection strategy to select unbiased features from all the layers. We observe this approach gives significant improvements in worst-group accuracy on several standard benchmarks.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.14637
Document Type :
Working Paper