CAETC: Causal Autoencoding and Treatment Conditioning for Counterfactual Estimation over Time
arXiv cs.LG / 3/13/2026
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Key Points
- CAETC introduces causal autoencoding and treatment conditioning to improve counterfactual estimation over time, with potential applications in personalized medicine.
- The method uses adversarial representation learning to learn a partially invertible and treatment-invariant representation, on top of which outcome prediction is performed via treatment-specific conditioning.
- The approach is independent of the underlying sequence model and can be integrated with architectures such as LSTMs or temporal convolution networks (TCNs).
- Extensive experiments on synthetic, semi-synthetic, and real-world data show that CAETC yields significant improvements over existing methods for counterfactual estimation.
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