Selection bias, caused by preferential exclusion of units (or samples) from the data, is a major obstacle to valid causal inferences, for it cannot be removed or even detected by randomized experiments. This paper highlights several graphical and algebraic methods capable of mitigating and sometimes eliminating this bias. These nonparametric methods generalize and improve previously reported results, and identify the type of knowledge that need to be available for reasoning in the presence of selection bia
In the causal adjustment setting, variable selection techniques based only on the outcome or only on...
Access to a representative sample from the population is an assumption that underpins all of machine...
Current efforts in systems genetics have focused on the development of statistical approaches that a...
Selection bias is caused by preferential exclusion of units from the samples and represents a major ...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
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...
Cause-and-effect relations are one of the most valuable types of knowledge sought after throughout t...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
This paper addresses the problem of measurement errors in causal inference and highlights several al...
This paper highlights several areas where graphical techniques can be harnessed to address the probl...
Objectives: Spurious associations between an exposure and outcome not describing the causal estimand...
This thesis presents a creative and practical approach to dealing with the problem of selection bias...
Controlling for selection and confounding biases are two of the most challenging problems in the emp...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
In the causal adjustment setting, variable selection techniques based only on the outcome or only on...
Access to a representative sample from the population is an assumption that underpins all of machine...
Current efforts in systems genetics have focused on the development of statistical approaches that a...
Selection bias is caused by preferential exclusion of units from the samples and represents a major ...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
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...
Cause-and-effect relations are one of the most valuable types of knowledge sought after throughout t...
Controlling for selection and confounding biases are two of the most challenging problems that appea...
This paper addresses the problem of measurement errors in causal inference and highlights several al...
This paper highlights several areas where graphical techniques can be harnessed to address the probl...
Objectives: Spurious associations between an exposure and outcome not describing the causal estimand...
This thesis presents a creative and practical approach to dealing with the problem of selection bias...
Controlling for selection and confounding biases are two of the most challenging problems in the emp...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
In the causal adjustment setting, variable selection techniques based only on the outcome or only on...
Access to a representative sample from the population is an assumption that underpins all of machine...
Current efforts in systems genetics have focused on the development of statistical approaches that a...