Identifiable Latent Neural Causal Models
- URL: http://arxiv.org/abs/2403.15711v1
- Date: Sat, 23 Mar 2024 04:13:55 GMT
- Title: Identifiable Latent Neural Causal Models
- Authors: Yuhang Liu, Zhen Zhang, Dong Gong, Mingming Gong, Biwei Huang, Anton van den Hengel, Kun Zhang, Javen Qinfeng Shi,
- Abstract summary: Causal representation learning seeks to uncover latent, high-level causal representations from low-level observed data.
We determine the types of distribution shifts that do contribute to the identifiability of causal representations.
We translate our findings into a practical algorithm, allowing for the acquisition of reliable latent causal representations.
- Score: 82.14087963690561
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Causal representation learning seeks to uncover latent, high-level causal representations from low-level observed data. It is particularly good at predictions under unseen distribution shifts, because these shifts can generally be interpreted as consequences of interventions. Hence leveraging {seen} distribution shifts becomes a natural strategy to help identifying causal representations, which in turn benefits predictions where distributions are previously {unseen}. Determining the types (or conditions) of such distribution shifts that do contribute to the identifiability of causal representations is critical. This work establishes a {sufficient} and {necessary} condition characterizing the types of distribution shifts for identifiability in the context of latent additive noise models. Furthermore, we present partial identifiability results when only a portion of distribution shifts meets the condition. In addition, we extend our findings to latent post-nonlinear causal models. We translate our findings into a practical algorithm, allowing for the acquisition of reliable latent causal representations. Our algorithm, guided by our underlying theory, has demonstrated outstanding performance across a diverse range of synthetic and real-world datasets. The empirical observations align closely with the theoretical findings, affirming the robustness and effectiveness of our approach.
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