A general nonparametric test for constancy of smooth function-valued parameters from conditional distributions is introduced, with a tractable limiting null distribution unlike many norm-based alternatives.
Nonparametric tests of treatment effect homogeneity for policy-makers
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abstract
Recent work has focused on nonparametric estimation of conditional treatment effects, but inference has remained relatively unexplored. We propose a class of nonparametric tests for both quantitative and qualitative treatment effect heterogeneity. The tests can incorporate a variety of structured assumptions on the conditional average treatment effect, allow for both continuous and discrete covariates, and do not require sample splitting to obtain a tractable asymptotic null distribution. Furthermore, we show how the tests are tailored to detect alternatives where the population impact of adopting a personalized decision rule differs from using a rule that discards covariates. The proposal is thus relevant for guiding treatment policies. The utility of the proposal is borne out in simulation studies and a re-analysis of an AIDS clinical trial.
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stat.ME 1years
2026 1verdicts
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A general nonparametric framework for testing hypotheses about function-valued parameters
A general nonparametric test for constancy of smooth function-valued parameters from conditional distributions is introduced, with a tractable limiting null distribution unlike many norm-based alternatives.