280 research outputs found
Orthogonal Series Estimation for the Ratio of Conditional Expectation Functions
In various fields of data science, researchers are often interested in
estimating the ratio of conditional expectation functions (CEFR). Specifically
in causal inference problems, it is sometimes natural to consider ratio-based
treatment effects, such as odds ratios and hazard ratios, and even
difference-based treatment effects are identified as CEFR in some empirically
relevant settings. This chapter develops the general framework for estimation
and inference on CEFR, which allows the use of flexible machine learning for
infinite-dimensional nuisance parameters. In the first stage of the framework,
the orthogonal signals are constructed using debiased machine learning
techniques to mitigate the negative impacts of the regularization bias in the
nuisance estimates on the target estimates. The signals are then combined with
a novel series estimator tailored for CEFR. We derive the pointwise and uniform
asymptotic results for estimation and inference on CEFR, including the validity
of the Gaussian bootstrap, and provide low-level sufficient conditions to apply
the proposed framework to some specific examples. We demonstrate the
finite-sample performance of the series estimator constructed under the
proposed framework by numerical simulations. Finally, we apply the proposed
method to estimate the causal effect of the 401(k) program on household assets
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