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Active Learning for Decision-Making from Imbalanced Observational Data

10 April 2019
Iiris Sundin
Peter F. Schulam
E. Siivola
Aki Vehtari
Suchi Saria
Samuel Kaski
    OOD
    CML
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Abstract

Machine learning can help personalized decision support by learning models to predict individual treatment effects (ITE). This work studies the reliability of prediction-based decision-making in a task of deciding which action aaa to take for a target unit after observing its covariates x~\tilde{x}x~ and predicted outcomes p^(y~∣x~,a)\hat{p}(\tilde{y} \mid \tilde{x}, a)p^​(y~​∣x~,a). An example case is personalized medicine and the decision of which treatment to give to a patient. A common problem when learning these models from observational data is imbalance, that is, difference in treated/control covariate distributions, which is known to increase the upper bound of the expected ITE estimation error. We propose to assess the decision-making reliability by estimating the ITE model's Type S error rate, which is the probability of the model inferring the sign of the treatment effect wrong. Furthermore, we use the estimated reliability as a criterion for active learning, in order to collect new (possibly expensive) observations, instead of making a forced choice based on unreliable predictions. We demonstrate the effectiveness of this decision-making aware active learning in two decision-making tasks: in simulated data with binary outcomes and in a medical dataset with synthetic and continuous treatment outcomes.

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