Robust and Agnostic Learning of Conditional Distributional Treatment
Effects
- URL: http://arxiv.org/abs/2205.11486v1
- Date: Mon, 23 May 2022 17:40:31 GMT
- Title: Robust and Agnostic Learning of Conditional Distributional Treatment
Effects
- Authors: Nathan Kallus and Miruna Oprescu
- Abstract summary: The conditional average treatment effect (CATE) is the best point prediction of individual causal effects.
In aggregate analyses, this is usually addressed by measuring distributional treatment effect (DTE)
We provide a new robust and model-agnostic methodology for learning the conditional DTE (CDTE) for a wide class of problems.
- Score: 62.44901952244514
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The conditional average treatment effect (CATE) is the best point prediction
of individual causal effects given individual baseline covariates and can help
personalize treatments. However, as CATE only reflects the (conditional)
average, it can wash out potential risks and tail events, which are crucially
relevant to treatment choice. In aggregate analyses, this is usually addressed
by measuring distributional treatment effect (DTE), such as differences in
quantiles or tail expectations between treatment groups. Hypothetically, one
can similarly fit covariate-conditional quantile regressions in each treatment
group and take their difference, but this would not be robust to
misspecification or provide agnostic best-in-class predictions. We provide a
new robust and model-agnostic methodology for learning the conditional DTE
(CDTE) for a wide class of problems that includes conditional quantile
treatment effects, conditional super-quantile treatment effects, and
conditional treatment effects on coherent risk measures given by
$f$-divergences. Our method is based on constructing a special pseudo-outcome
and regressing it on baseline covariates using any given regression learner.
Our method is model-agnostic in the sense that it can provide the best
projection of CDTE onto the regression model class. Our method is robust in the
sense that even if we learn these nuisances nonparametrically at very slow
rates, we can still learn CDTEs at rates that depend on the class complexity
and even conduct inferences on linear projections of CDTEs. We investigate the
performance of our proposal in simulation studies, and we demonstrate its use
in a case study of 401(k) eligibility effects on wealth.
Related papers
- Quantifying Aleatoric Uncertainty of the Treatment Effect: A Novel Orthogonal Learner [72.20769640318969]
Estimating causal quantities from observational data is crucial for understanding the safety and effectiveness of medical treatments.
Medical practitioners require not only estimating averaged causal quantities, but also understanding the randomness of the treatment effect as a random variable.
This randomness is referred to as aleatoric uncertainty and is necessary for understanding the probability of benefit from treatment or quantiles of the treatment effect.
arXiv Detail & Related papers (2024-11-05T18:14:49Z) - B-Learner: Quasi-Oracle Bounds on Heterogeneous Causal Effects Under
Hidden Confounding [51.74479522965712]
We propose a meta-learner called the B-Learner, which can efficiently learn sharp bounds on the CATE function under limits on hidden confounding.
We prove its estimates are valid, sharp, efficient, and have a quasi-oracle property with respect to the constituent estimators under more general conditions than existing methods.
arXiv Detail & Related papers (2023-04-20T18:07:19Z) - Proximal Causal Learning of Conditional Average Treatment Effects [0.0]
We propose a tailored two-stage loss function for learning heterogeneous treatment effects.
Our proposed estimator can be implemented by off-the-shelf loss-minimizing machine learning methods.
arXiv Detail & Related papers (2023-01-26T02:56:36Z) - Treatment Effect Risk: Bounds and Inference [58.442274475425144]
Since the average treatment effect measures the change in social welfare, even if positive, there is a risk of negative effect on, say, some 10% of the population.
In this paper we consider how to nonetheless assess this important risk measure, formalized as the conditional value at risk (CVaR) of the ITE distribution.
Some bounds can also be interpreted as summarizing a complex CATE function into a single metric and are of interest independently of being a bound.
arXiv Detail & Related papers (2022-01-15T17:21:26Z) - Efficient Learning of Optimal Individualized Treatment Rules for
Heteroscedastic or Misspecified Treatment-Free Effect Models [3.7311680121118345]
We propose an Efficient Learning framework for finding an optimal individualized treatment rule (ITR) in the multi-armed treatment setting.
We show that the proposed E-Learning is optimal among a regular class of semiparametric estimates that can allow treatment-free effect misspecification.
arXiv Detail & Related papers (2021-09-06T16:11:42Z) - Conditional Distributional Treatment Effect with Kernel Conditional Mean
Embeddings and U-Statistic Regression [20.544239209511982]
conditional distributional treatment effect (CoDiTE)
CoDiTE encodes a treatment's distributional aspects beyond the mean.
Experiments on synthetic, semi-synthetic and real datasets demonstrate the merits of our approach.
arXiv Detail & Related papers (2021-02-16T15:09:23Z) - Bayesian prognostic covariate adjustment [59.75318183140857]
Historical data about disease outcomes can be integrated into the analysis of clinical trials in many ways.
We build on existing literature that uses prognostic scores from a predictive model to increase the efficiency of treatment effect estimates.
arXiv Detail & Related papers (2020-12-24T05:19:03Z) - Increasing the efficiency of randomized trial estimates via linear
adjustment for a prognostic score [59.75318183140857]
Estimating causal effects from randomized experiments is central to clinical research.
Most methods for historical borrowing achieve reductions in variance by sacrificing strict type-I error rate control.
arXiv Detail & Related papers (2020-12-17T21:10:10Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.