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Weakly Supervised Disentanglement with Guarantees

About

Learning disentangled representations that correspond to factors of variation in real-world data is critical to interpretable and human-controllable machine learning. Recently, concerns about the viability of learning disentangled representations in a purely unsupervised manner has spurred a shift toward the incorporation of weak supervision. However, there is currently no formalism that identifies when and how weak supervision will guarantee disentanglement. To address this issue, we provide a theoretical framework to assist in analyzing the disentanglement guarantees (or lack thereof) conferred by weak supervision when coupled with learning algorithms based on distribution matching. We empirically verify the guarantees and limitations of several weak supervision methods (restricted labeling, match-pairing, and rank-pairing), demonstrating the predictive power and usefulness of our theoretical framework.

Rui Shu, Yining Chen, Abhishek Kumar, Stefano Ermon, Ben Poole• 2019

Related benchmarks

TaskDatasetResultRank
Disentangled Representation LearningCars3D
FactorVAE0.573
35
DisentanglementShapes3D--
18
Abstract Visual ReasoningAbstract Visual Reasoning WReN (10^2 samples)
Accuracy17.7
15
DisentanglementShapes3D
BetaVAE Score0.512
13
DisentanglementMPI3D
BetaVAE Score0.353
13
Abstract Visual ReasoningAbstract Visual Reasoning 10^4 samples WReN
Classification Accuracy44.4
5
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