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Efficient Real-world Testing of Causal Decision Making via Bayesian Experimental Design for Contextual Optimisation (2207.05250v1)

Published 12 Jul 2022 in stat.ML, cs.AI, cs.LG, stat.CO, and stat.ME

Abstract: The real-world testing of decisions made using causal machine learning models is an essential prerequisite for their successful application. We focus on evaluating and improving contextual treatment assignment decisions: these are personalised treatments applied to e.g. customers, each with their own contextual information, with the aim of maximising a reward. In this paper we introduce a model-agnostic framework for gathering data to evaluate and improve contextual decision making through Bayesian Experimental Design. Specifically, our method is used for the data-efficient evaluation of the regret of past treatment assignments. Unlike approaches such as A/B testing, our method avoids assigning treatments that are known to be highly sub-optimal, whilst engaging in some exploration to gather pertinent information. We achieve this by introducing an information-based design objective, which we optimise end-to-end. Our method applies to discrete and continuous treatments. Comparing our information-theoretic approach to baselines in several simulation studies demonstrates the superior performance of our proposed approach.

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Authors (4)
  1. Joel Jennings (15 papers)
  2. Cheng Zhang (388 papers)
  3. Adam Foster (45 papers)
  4. Desi R. Ivanova (8 papers)
Citations (2)

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