Quantized Disentanglement: A Practical Approach

TMLR Paper5328 Authors

07 Jul 2025 (modified: 16 Jul 2025)Under review for TMLREveryoneRevisionsBibTeXCC BY 4.0
Abstract: Recent theoretical work established the unsupervised identifiability of quantized factors under any diffeomorphism. The theory assumes that quantization thresholds correspond to axis-aligned discontinuities in the probability density of the latent factors. By constraining a learned map to have a density with axis-aligned discontinuities, we can recover the quantization of the factors. However, translating this high-level principle into an effective practical criterion remains challenging, especially under nonlinear maps. Here, we develop a criterion for unsupervised disentanglement by encouraging axis-aligned discontinuities. Discontinuities manifest as sharp changes in the estimated density of factors and form what we call cliffs. Following the definition of independent discontinuities from the theory, we encourage the location of the cliffs along a factor to be independent of the values of the other factors. We show that our method, Cliff, outperforms the baselines on disentanglement benchmarks, demonstrating its effectiveness in unsupervised disentanglement.
Submission Length: Regular submission (no more than 12 pages of main content)
Assigned Action Editor: ~Francesco_Locatello1
Submission Number: 5328
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