End-To-End Causal Effect Estimation from Unstructured Natural Language Data
–Neural Information Processing Systems
Knowing the effect of an intervention is critical for human decision-making, but current approaches for causal effect estimation rely on manual data collection and structuring, regardless of the causal assumptions.
Neural Information Processing Systems
Mar-23-2025, 17:46:58 GMT
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