A Critical Look At The Identifiability of Causal Effects with Deep
Latent Variable Models
- URL: http://arxiv.org/abs/2102.06648v1
- Date: Fri, 12 Feb 2021 17:43:18 GMT
- Title: A Critical Look At The Identifiability of Causal Effects with Deep
Latent Variable Models
- Authors: Severi Rissanen, Pekka Marttinen
- Abstract summary: We use causal effect variational autoencoder (CEVAE) as a case study.
CEVAE seems to work reliably under some simple scenarios, but it does not identify the correct causal effect with a misspecified latent variable or a complex data distribution.
Our results show that the question of identifiability cannot be disregarded, and we argue that more attention should be paid to it in future work.
- Score: 2.326384409283334
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Using deep latent variable models in causal inference has attracted
considerable interest recently, but an essential open question is their
identifiability. While they have yielded promising results and theory exists on
the identifiability of some simple model formulations, we also know that causal
effects cannot be identified in general with latent variables. We investigate
this gap between theory and empirical results with theoretical considerations
and extensive experiments under multiple synthetic and real-world data sets,
using the causal effect variational autoencoder (CEVAE) as a case study. While
CEVAE seems to work reliably under some simple scenarios, it does not identify
the correct causal effect with a misspecified latent variable or a complex data
distribution, as opposed to the original goals of the model. Our results show
that the question of identifiability cannot be disregarded, and we argue that
more attention should be paid to it in future work.
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