2021
DOI: 10.48550/arxiv.2111.13185
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Learning Conditional Invariance through Cycle Consistency

Maxim Samarin,
Vitali Nesterov,
Mario Wieser
et al.

Abstract: Identifying meaningful and independent factors of variation in a dataset is a challenging learning task frequently addressed by means of deep latent variable models. This task can be viewed as learning symmetry transformations preserving the value of a chosen property along latent dimensions. However, existing approaches exhibit severe drawbacks in enforcing the invariance property in the latent space. We address these shortcomings with a novel approach to cycle consistency. Our method involves two separate la… Show more

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