Cause-and-effect relations are one of the most valuable types of knowledge sought after throughout the data-driven sciences since they translate into stable and generalizable explanations as well as efficient and robust decision-making capabilities. Inferring these relations from data, however, is a challenging task. Two of the most common barriers to this goal are known as confounding and selection biases. The former stems from the systematic bias introduced during the treatment assignment, while the latter comes from the systematic bias during the collection of units into the sample. In this paper, we consider the problem of identifiability of causal effects when both confounding and selection biases are simultaneously present. We first i...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Assume that cause-effect relationships be-tween variables can be described as a directed acyclic gra...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Selection bias is caused by preferential exclusion of units from the samples and represents a major ...
Controlling for selection and confounding biases are two of the most challenging problems in the emp...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
We study the identifiability and estimation of functional causal models under selection bias, with a...
This paper considers the problem of using observational data in the presence of selection bias to id...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Description of prior research and/or its intellectual context and/or its policy context. In observat...
Selection and confounding biases are the two most common impediments to the applicability of causal ...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Assume that cause-effect relationships be-tween variables can be described as a directed acyclic gra...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Selection bias is caused by preferential exclusion of units from the samples and represents a major ...
Controlling for selection and confounding biases are two of the most challenging problems in the emp...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
We study the identifiability and estimation of functional causal models under selection bias, with a...
This paper considers the problem of using observational data in the presence of selection bias to id...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Description of prior research and/or its intellectual context and/or its policy context. In observat...
Selection and confounding biases are the two most common impediments to the applicability of causal ...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Assume that cause-effect relationships be-tween variables can be described as a directed acyclic gra...
Accurately measuring discrimination in machine learning-based automated decision systems is required...