Hybrid Censored Quantile Regression Forest to Assess the Heterogeneous
Effects
- URL: http://arxiv.org/abs/2212.05672v1
- Date: Mon, 12 Dec 2022 03:01:36 GMT
- Title: Hybrid Censored Quantile Regression Forest to Assess the Heterogeneous
Effects
- Authors: Huichen Zhu, Yifei Sun, Ying Wei
- Abstract summary: We develop a hybrid forest approach called Hybrid Censored Quantile Regression Forest (HCQRF) to assess the heterogeneous effects varying with high-dimensional variables.
We propose a variable importance decomposition to measure the impact of a variable on the treatment effect function.
- Score: 4.194179127753325
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In many applications, heterogeneous treatment effects on a censored response
variable are of primary interest, and it is natural to evaluate the effects at
different quantiles (e.g., median). The large number of potential effect
modifiers, the unknown structure of the treatment effects, and the presence of
right censoring pose significant challenges. In this paper, we develop a hybrid
forest approach called Hybrid Censored Quantile Regression Forest (HCQRF) to
assess the heterogeneous effects varying with high-dimensional variables. The
hybrid estimation approach takes advantage of the random forests and the
censored quantile regression. We propose a doubly-weighted estimation procedure
that consists of a redistribution-of-mass weight to handle censoring and an
adaptive nearest neighbor weight derived from the forest to handle
high-dimensional effect functions. We propose a variable importance
decomposition to measure the impact of a variable on the treatment effect
function. Extensive simulation studies demonstrate the efficacy and stability
of HCQRF. The result of the simulation study also convinces us of the
effectiveness of the variable importance decomposition. We apply HCQRF to a
clinical trial of colorectal cancer. We achieve insightful estimations of the
treatment effect and meaningful variable importance results. The result of the
variable importance also confirms the necessity of the decomposition.
Related papers
- A Bayesian Classification Trees Approach to Treatment Effect Variation with Noncompliance [0.5356944479760104]
Estimating varying treatment effects in randomized trials with noncompliance is inherently challenging.
Existing flexible machine learning methods are highly sensitive to the weak instruments problem.
We present a Bayesian Causal Forest model for binary response variables in scenarios with noncompliance.
arXiv Detail & Related papers (2024-08-14T18:33:55Z) - The effect of data augmentation and 3D-CNN depth on Alzheimer's Disease
detection [51.697248252191265]
This work summarizes and strictly observes best practices regarding data handling, experimental design, and model evaluation.
We focus on Alzheimer's Disease (AD) detection, which serves as a paradigmatic example of challenging problem in healthcare.
Within this framework, we train predictive 15 models, considering three different data augmentation strategies and five distinct 3D CNN architectures.
arXiv Detail & Related papers (2023-09-13T10:40:41Z) - Variable importance for causal forests: breaking down the heterogeneity
of treatment effects [0.0]
We develop a new importance variable algorithm for causal forests.
We show how to handle the forest retrain without a confounding variable.
Experiments on simulated, semi-synthetic, and real data show the good performance of our importance measure.
arXiv Detail & Related papers (2023-08-07T07:43:42Z) - A Causal Framework for Decomposing Spurious Variations [68.12191782657437]
We develop tools for decomposing spurious variations in Markovian and Semi-Markovian models.
We prove the first results that allow a non-parametric decomposition of spurious effects.
The described approach has several applications, ranging from explainable and fair AI to questions in epidemiology and medicine.
arXiv Detail & Related papers (2023-06-08T09:40:28Z) - 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) - Inference for High Dimensional Censored Quantile Regression [8.993036560782137]
This paper proposes a novel procedure to draw inference on all predictors within the framework of global censored quantile regression.
We show that our procedure can properly quantify the uncertainty of the estimates in high dimensional settings.
We apply our method to analyze the heterogeneous effects of SNPs residing in lung cancer pathways on patients' survival.
arXiv Detail & Related papers (2021-07-22T23:57:06Z) - Localisation determines the optimal noise rate for quantum transport [68.8204255655161]
Localisation and the optimal dephasing rate in 1D chains are studied.
A simple power law captures the interplay between size-dependent and size-independent responses.
Relationship continues to apply at intermediate and high temperature but breaks down in the low temperature limit.
arXiv Detail & Related papers (2021-06-23T17:52:16Z) - Efficient Causal Inference from Combined Observational and
Interventional Data through Causal Reductions [68.6505592770171]
Unobserved confounding is one of the main challenges when estimating causal effects.
We propose a novel causal reduction method that replaces an arbitrary number of possibly high-dimensional latent confounders.
We propose a learning algorithm to estimate the parameterized reduced model jointly from observational and interventional data.
arXiv Detail & Related papers (2021-03-08T14:29:07Z) - Sparse Bayesian Causal Forests for Heterogeneous Treatment Effects
Estimation [0.0]
This paper develops a sparsity-inducing version of Bayesian Causal Forests.
It is designed to estimate heterogeneous treatment effects using observational data.
arXiv Detail & Related papers (2021-02-12T15:24:50Z) - Estimating heterogeneous treatment effects with right-censored data via
causal survival forests [2.624902795082451]
We introduce causal survival forests, which can be used to estimate heterogeneous treatment effects in a survival and observational setting.
Our approach relies on estimating equations to robustly adjust for both censoring and selection effects under unconfoundedness.
arXiv Detail & Related papers (2020-01-27T16:22:05Z) - Censored Quantile Regression Forest [81.9098291337097]
We develop a new estimating equation that adapts to censoring and leads to quantile score whenever the data do not exhibit censoring.
The proposed procedure named it censored quantile regression forest, allows us to estimate quantiles of time-to-event without any parametric modeling assumption.
arXiv Detail & Related papers (2020-01-08T23:20:23Z)
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.