Amortized Inference of Causal Models via Conditional Fixed-Point Iterations
arXiv stat.ML / 2026/4/6
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要点
- The paper proposes an amortized inference framework for Structural Causal Models (SCMs), aiming to infer causal mechanisms without training a separate model for each dataset.
- It uses a transformer-based architecture to learn dataset embeddings from observational data, then extends the Fixed-Point Approach (FiP) to perform conditional fixed-point iterations based on those embeddings.
- A key capability is generating both observational and interventional data for novel SCMs at inference time without updating model parameters.
- Experiments indicate the amortized approach matches per-dataset baselines on both in-distribution and out-of-distribution tasks, and can outperform them in low-data (scarce data) settings.




