Deep Linear Probe Generators for Weight Space Learning
Abstract
Weight space learning aims to extract information about a neural network, such as its training dataset or generalization error. Recent approaches learn directly from model weights, but this presents many challenges as weights are high-dimensional and include permutation symmetries between neurons. An alternative approach, Probing, represents a model by passing a set of learned inputs (probes) through the model, and training a predictor on top of the corresponding outputs. Although probing is typically not used as a stand alone approach, our preliminary experiment found that a vanilla probing baseline worked surprisingly well. However, we discover that current probe learning strategies are ineffective. We therefore propose Deep Linear Probe Generators (ProbeGen), a simple and effective modification to probing approaches. ProbeGen adds a shared generator module with a deep linear architecture, providing an inductive bias towards structured probes thus reducing overfitting. While simple, ProbeGen performs significantly better than the state-of-the-art and is very efficient, requiring between 30 to 1000 times fewer FLOPs than other top approaches.
Cite
@article{arxiv.2410.10811,
title = {Deep Linear Probe Generators for Weight Space Learning},
author = {Jonathan Kahana and Eliahu Horwitz and Imri Shuval and Yedid Hoshen},
journal= {arXiv preprint arXiv:2410.10811},
year = {2025}
}
Comments
ICLR 2025. Project page: https://vision.huji.ac.il/probegen