Accurate estimation of conditional average treatment effects (CATE) is at the core of personalized decision making. While there is a plethora of models for CATE estimation, model selection is a nontrivial task, due to the fundamental problem of causal inference. Recent empirical work provides evidence in favor of proxy loss metrics with double robust properties and in favor of model ensembling. However, theoretical understanding is lacking. Direct application of prior theoretical work leads to suboptimal oracle model selection rates due to the non-convexity of the model selection problem. We provide regret rates for the major existing CATE ensembling approaches and propose a new CATE model ensembling approach based on Q-aggregation using th...
The capability of large businesses and eCommerce platforms to utilize vast amounts of customer data ...
The accepted manuscript version (last revised 5 Jan 2018 (v8)) has 118 pages, 3 tables, 11 figures, ...
We derive some decision rules to select best predictive regression models in a credibility context, ...
Robust inference of a low-dimensional parameter in a large semi-parametric model relies on externa...
In recent years, proponents of configurational comparative methods (CCMs) have advanced various dime...
This dissertation consists of three chapters that study treatment effect estimation and treatment ch...
Efficiently and flexibly estimating treatment effect heterogeneity is an important task in a wide va...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
Unmeasured confounding and selection bias are often of concern in observational studies and may inva...
Offline reinforcement learning is important in domains such as medicine, economics, and e-commerce w...
We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad cla...
With the rise of large and fine-grained data sets, there is a desire for researchers, physicians, bu...
Causal modeling is central to many areas of artificial intelligence, including complex reasoning, pl...
Datasets for training recommender systems are often subject to distribution shift induced by users' ...
There is an increasing appeal in answering causal questions, and this interest has drawn perspective...
The capability of large businesses and eCommerce platforms to utilize vast amounts of customer data ...
The accepted manuscript version (last revised 5 Jan 2018 (v8)) has 118 pages, 3 tables, 11 figures, ...
We derive some decision rules to select best predictive regression models in a credibility context, ...
Robust inference of a low-dimensional parameter in a large semi-parametric model relies on externa...
In recent years, proponents of configurational comparative methods (CCMs) have advanced various dime...
This dissertation consists of three chapters that study treatment effect estimation and treatment ch...
Efficiently and flexibly estimating treatment effect heterogeneity is an important task in a wide va...
Two approaches to causal inference in the presence of non-random assignment are presented: The Prope...
Unmeasured confounding and selection bias are often of concern in observational studies and may inva...
Offline reinforcement learning is important in domains such as medicine, economics, and e-commerce w...
We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad cla...
With the rise of large and fine-grained data sets, there is a desire for researchers, physicians, bu...
Causal modeling is central to many areas of artificial intelligence, including complex reasoning, pl...
Datasets for training recommender systems are often subject to distribution shift induced by users' ...
There is an increasing appeal in answering causal questions, and this interest has drawn perspective...
The capability of large businesses and eCommerce platforms to utilize vast amounts of customer data ...
The accepted manuscript version (last revised 5 Jan 2018 (v8)) has 118 pages, 3 tables, 11 figures, ...
We derive some decision rules to select best predictive regression models in a credibility context, ...