GULP: a prediction-based metric between representations

10/12/2022
by   Enric Boix-Adserà, et al.
0

Comparing the representations learned by different neural networks has recently emerged as a key tool to understand various architectures and ultimately optimize them. In this work, we introduce GULP, a family of distance measures between representations that is explicitly motivated by downstream predictive tasks. By construction, GULP provides uniform control over the difference in prediction performance between two representations, with respect to regularized linear prediction tasks. Moreover, it satisfies several desirable structural properties, such as the triangle inequality and invariance under orthogonal transformations, and thus lends itself to data embedding and visualization. We extensively evaluate GULP relative to other methods, and demonstrate that it correctly differentiates between architecture families, converges over the course of training, and captures generalization performance on downstream linear tasks.

READ FULL TEXT

page 22

page 24

page 25

page 26

page 27

page 28

page 33

page 34

research
07/12/2021

Representation Learning for Out-Of-Distribution Generalization in Reinforcement Learning

Learning data representations that are useful for various downstream tas...
research
02/22/2023

Steerable Equivariant Representation Learning

Pre-trained deep image representations are useful for post-training task...
research
07/24/2020

Transferred Discrepancy: Quantifying the Difference Between Representations

Understanding what information neural networks capture is an essential p...
research
04/08/2021

Gi and Pal Scores: Deep Neural Network Generalization Statistics

The field of Deep Learning is rich with empirical evidence of human-like...
research
07/19/2019

Spectral Analysis of Latent Representations

We propose a metric, Layer Saturation, defined as the proportion of the ...
research
05/17/2023

Bike2Vec: Vector Embedding Representations of Road Cycling Riders and Races

Vector embeddings have been successfully applied in several domains to o...
research
06/21/2021

Lossy Compression for Lossless Prediction

Most data is automatically collected and only ever "seen" by algorithms....

Please sign up or login with your details

Forgot password? Click here to reset