On Causally Disentangled Representations
- URL: http://arxiv.org/abs/2112.05746v1
- Date: Fri, 10 Dec 2021 18:56:27 GMT
- Title: On Causally Disentangled Representations
- Authors: Abbavaram Gowtham Reddy, Benin Godfrey L, Vineeth N Balasubramanian
- Abstract summary: We present an analysis of disentangled representations through the notion of disentangled causal process.
We show that our metrics capture the desiderata of disentangled causal process.
We perform an empirical study on state of the art disentangled representation learners using our metrics and dataset to evaluate them from causal perspective.
- Score: 18.122893077772993
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Representation learners that disentangle factors of variation have already
proven to be important in addressing various real world concerns such as
fairness and interpretability. Initially consisting of unsupervised models with
independence assumptions, more recently, weak supervision and correlated
features have been explored, but without a causal view of the generative
process. In contrast, we work under the regime of a causal generative process
where generative factors are either independent or can be potentially
confounded by a set of observed or unobserved confounders. We present an
analysis of disentangled representations through the notion of disentangled
causal process. We motivate the need for new metrics and datasets to study
causal disentanglement and propose two evaluation metrics and a dataset. We
show that our metrics capture the desiderata of disentangled causal process.
Finally, we perform an empirical study on state of the art disentangled
representation learners using our metrics and dataset to evaluate them from
causal perspective.
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