Treatment recommendation with distributional targets

05/19/2020
by   Anders Bredahl Kock, et al.
0

We study the problem of a decision maker who must provide the best possible treatment recommendation based on an experiment. The desirability of the outcome distribution resulting from the policy recommendation is measured through a functional capturing the distributional characteristic that the decision maker is interested in optimizing. This could be its inherent inequality, welfare, level of poverty or its distance to a desired outcome distribution. If the functional of interest is not quasi-convex or if there are constraints, the policy maker must also consider mixtures of the available treatments. This vastly expands the set of recommendations that must be considered compared to the classic treatment problem in which one targets the mean. We characterize the difficulty of the problem by obtaining maximal expected regret lower bounds. Furthermore, we propose two regret-optimal policies. The first policy is static and thus applicable irrespectively of the the subjects arriving sequentially or not in the course of the experimental phase. The second policy can utilize that subjects arrive sequentially by successively eliminating inferior treatments and thus spends the sampling effort where it is most needed.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset