Controlling for selection and confounding biases are two of the most challenging problems that appear in data analysis in the empirical sciences as well as in artificial intelligence tasks. The combination of previously studied methods for each of these biases in isolation is not directly applicable to certain non-trivial cases in which selection and confounding biases are simultaneously present. In this paper, we tackle these instances non-parametrically and in full generality. We provide graphical and algorithmic conditions for recoverability of interventional distributions for when selection and confounding biases are both present. Our treatment completely characterizes the class of causal effects that are recoverable in Markovian models...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
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...
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...
Cause-and-effect relations are one of the most valuable types of knowledge sought after throughout t...
This paper considers the problem of using observational data in the presence of selection bias to id...
This note deals with a class of variables that, if conditioned on, tends to amplify confounding bias...
Selection and confounding biases are the two most common impediments to the applicability of causal ...
In this thesis, we explore causal inference in observational studies with particular emphasis on the...
We study the identifiability and estimation of functional causal models under selection bias, with a...
Selection bias, caused by preferential exclusion of units (or samples) from the data, is a major obs...
We consider methods for estimating causal effects of treatment in the situation where the individual...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
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...
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...
Cause-and-effect relations are one of the most valuable types of knowledge sought after throughout t...
This paper considers the problem of using observational data in the presence of selection bias to id...
This note deals with a class of variables that, if conditioned on, tends to amplify confounding bias...
Selection and confounding biases are the two most common impediments to the applicability of causal ...
In this thesis, we explore causal inference in observational studies with particular emphasis on the...
We study the identifiability and estimation of functional causal models under selection bias, with a...
Selection bias, caused by preferential exclusion of units (or samples) from the data, is a major obs...
We consider methods for estimating causal effects of treatment in the situation where the individual...
We prove the main rules of causal calculus (also called do-calculus) for i/o structural causal model...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...