DCI-ES: An Extended Disentanglement Framework with Connections to Identifiability

10/01/2022
by   Cian Eastwood, et al.
10

In representation learning, a common approach is to seek representations which disentangle the underlying factors of variation. Eastwood Williams (2018) proposed three metrics for quantifying the quality of such disentangled representations: disentanglement (D), completeness (C) and informativeness (I). In this work, we first connect this DCI framework to two common notions of linear and nonlinear identifiability, thus establishing a formal link between disentanglement and the closely-related field of independent component analysis. We then propose an extended DCI-ES framework with two new measures of representation quality - explicitness (E) and size (S) - and point out how D and C can be computed for black-box predictors. Our main idea is that the functional capacity required to use a representation is an important but thus-far neglected aspect of representation quality, which we quantify using explicitness or ease-of-use (E). We illustrate the relevance of our extensions on the MPI3D and Cars3D datasets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/18/2020

Linear Disentangled Representations and Unsupervised Action Estimation

Disentangled representation learning has seen a surge in interest over r...
research
02/14/2022

Delaunay Component Analysis for Evaluation of Data Representations

Advanced representation learning techniques require reliable and general...
research
02/26/2020

Representation Learning Through Latent Canonicalizations

We seek to learn a representation on a large annotated data source that ...
research
05/19/2023

Enriching Disentanglement: Definitions to Metrics

Disentangled representation learning is a challenging task that involves...
research
06/21/2018

Deep Orthogonal Representations: Fundamental Properties and Applications

Several representation learning and, more broadly, dimensionality reduct...
research
11/11/2020

Quantifying and Learning Disentangled Representations with Limited Supervision

Learning low-dimensional representations that disentangle the underlying...

Please sign up or login with your details

Forgot password? Click here to reset