Identifying Causal-Effect Inference Failure with Uncertainty-Aware Models
–Neural Information Processing Systems
We introduce a practical approach for integrating uncertainty estimation into a class of state-of-the-art neural network methods used for individual-level causal estimates. We show that our methods enable us to deal gracefully with situations of "no-overlap", common in high-dimensional data, where standard applications of causal effect approaches fail.
Neural Information Processing Systems
Aug-14-2025, 23:39:21 GMT
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