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arxiv: 2307.05704 · v1 · pith:QIGAFHYZnew · submitted 2023-07-11 · 💻 cs.LG · cs.AI· cs.CV

A Causal Ordering Prior for Unsupervised Representation Learning

classification 💻 cs.LG cs.AIcs.CV
keywords causallatentlearningrepresentationunsuperviseddataorderingvariables
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Unsupervised representation learning with variational inference relies heavily on independence assumptions over latent variables. Causal representation learning (CRL), however, argues that factors of variation in a dataset are, in fact, causally related. Allowing latent variables to be correlated, as a consequence of causal relationships, is more realistic and generalisable. So far, provably identifiable methods rely on: auxiliary information, weak labels, and interventional or even counterfactual data. Inspired by causal discovery with functional causal models, we propose a fully unsupervised representation learning method that considers a data generation process with a latent additive noise model (ANM). We encourage the latent space to follow a causal ordering via loss function based on the Hessian of the latent distribution.

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