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CITRIS: Causal Identifiability from Temporal Intervened Sequences

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Understanding the latent causal factors of a dynamical system from visual observations is considered a crucial step towards agents reasoning in complex environments. In this paper, we propose CITRIS, a variational autoencoder framework that learns causal representations from temporal sequences of images in which underlying causal factors have possibly been intervened upon. In contrast to the recent literature, CITRIS exploits temporality and observing intervention targets to identify scalar and multidimensional causal factors, such as 3D rotation angles. Furthermore, by introducing a normalizing flow, CITRIS can be easily extended to leverage and disentangle representations obtained by already pretrained autoencoders. Extending previous results on scalar causal factors, we prove identifiability in a more general setting, in which only some components of a causal factor are affected by interventions. In experiments on 3D rendered image sequences, CITRIS outperforms previous methods on recovering the underlying causal variables. Moreover, using pretrained autoencoders, CITRIS can even generalize to unseen instantiations of causal factors, opening future research areas in sim-to-real generalization for causal representation learning.

Phillip Lippe, Sara Magliacane, Sindy L\"owe, Yuki M. Asano, Taco Cohen, Efstratios Gavves• 2022

Related benchmarks

TaskDatasetResultRank
Causal Graph DiscoveryCausalWorld Push
SHD0.7
9
Causal Graph DiscoveryCausalWorld Stack
SHD1.8
9
Causal Graph DiscoveryCausalWorld Chain
SHD3.5
9
Counterfactual PredictionSI-Blocks
CF-Acc74
9
Counterfactual PredictionCLEVRER Hypothesis
CF-Acc69
9
Causal Graph DiscoverySI-Blocks
SHD2.5
9
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