Many methods have been proposed to estimate treatment effects with observational data. Often, the choice of the method considers the application's characteristics, such as type of treatment and outcome, confounding effect, and the complexity of the data. These methods implicitly assume that the sample size is large enough to train such models, especially the neural network-based estimators. What if this is not the case? In this work, we propose Causal-Batle, a methodology to estimate treatment effects in small high-dimensional datasets in the presence of another high-dimensional dataset in the same feature space. We adopt an approach that brings transfer learning techniques into causal inference. Our experiments show that such an approach h...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...
A fundamental assumption used in causal inference with observational data is that treatment assignme...
We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad cla...
A trained neural network can be interpreted as a structural causal model (SCM) that provides the eff...
Nowadays, in many scientific and industrial fields there is an increasing need for estimating treatm...
Estimating treatment effects from observational data is a central problem in causal inference. Metho...
Many causal inference approaches have focused on identifying an individual's outcome change due to a...
Convolutional neural networks (CNN) have been successful in machine learning applications. Their suc...
We present a short selective review of causal inference from observational data, with a particular e...
Learning high-level causal representations together with a causal model from unstructured low-level ...
Although understanding and characterizing causal effects have become essential in observational stud...
Electronic Health Records (EHR) data analysis plays a crucial role in healthcare system quality. Bec...
Advances in computer science technologies have shed light on artificial neural networks (ANN). ANN s...
This dissertation consists of three chapters that study causal inference when applying machinelearni...
Many modern problems in causal inference have non-trivial complications beyond the classical setting...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...
A fundamental assumption used in causal inference with observational data is that treatment assignme...
We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad cla...
A trained neural network can be interpreted as a structural causal model (SCM) that provides the eff...
Nowadays, in many scientific and industrial fields there is an increasing need for estimating treatm...
Estimating treatment effects from observational data is a central problem in causal inference. Metho...
Many causal inference approaches have focused on identifying an individual's outcome change due to a...
Convolutional neural networks (CNN) have been successful in machine learning applications. Their suc...
We present a short selective review of causal inference from observational data, with a particular e...
Learning high-level causal representations together with a causal model from unstructured low-level ...
Although understanding and characterizing causal effects have become essential in observational stud...
Electronic Health Records (EHR) data analysis plays a crucial role in healthcare system quality. Bec...
Advances in computer science technologies have shed light on artificial neural networks (ANN). ANN s...
This dissertation consists of three chapters that study causal inference when applying machinelearni...
Many modern problems in causal inference have non-trivial complications beyond the classical setting...
The popularity of machine learning in both academia and industry has experienced unparalleled growth...
A fundamental assumption used in causal inference with observational data is that treatment assignme...
We derive general, yet simple, sharp bounds on the size of the omitted variable bias for a broad cla...