Causal Mixture Models: Characterization and Discovery
–Neural Information Processing Systems
Real-world datasets are often a combination of unobserved subpopulations that follow distinct causal generating processes. In an observational study, for example, participants may fall into unknown groups that either (a) respond effectively to a drug, or (b) show no response due to drug resistance. Not accounting for such heterogeneity then risks biased estimates of drug effectiveness. In this work, we formulate this setting through a causal mixture model, in which the data-generating process of each variable depends on latent group membership (a or b).
Neural Information Processing Systems
Jun-16-2026, 18:37:11 GMT
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- North America > United States (0.93)
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- New Finding (1.00)
- Experimental Study (1.00)
- Research Report
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