In mixed methods approaches, statistical models are used to identify “nested” cases for intensive, small-n investigation for a range of purposes, including notably the examination of causal mechanisms. This article shows that under a commonsense interpretation of causal effects, large-n models allow no reliable conclusions about effect sizes in individual cases—even if we choose “onlier” cases as is usually suggested. Contrary to established practice, we show that choosing “reinforcing” outlier cases—where outcomes are stronger than predicted in the statistical model—is appropriate for testing preexisting hypotheses on causal mechanisms, as this reduces the risk of false negatives. When investigating mechanisms inductively, researchers face...
This dissertation presents three new methodologies for analyzing randomized controlled trials using ...
Traditionally, social scientists perceived causality as regularity. As a consequence, qualitative co...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Analysis of a large longitudinal study of children motivated our work. The results illustrate how ac...
Investigators are increasingly using novel methods for extending (generalizing or transporting) caus...
We attempt to clarify, and suggest how to avoid, several serious misunderstandings about and fallaci...
Traditionally, social scientists perceived causality as regularity. As a consequence, qualitative co...
Causation can be inferred by two distinct patterns of reasoning, each requiring a distinct experi-me...
Evidential pluralists, like Federica Russo and Jon Williamson, argue that causal claims should be co...
Learning from data which associations hold and are likely to hold in the future is a fundamental par...
We propose a new method to estimate causal effects from nonexperimental data. Each pair of sample un...
This manuscript includes three topics in causal inference, all of which are under the randomization ...
Case-control study designs are frequently used in public health and medical research to assess poten...
This dissertation presents three new methodologies for analyzing randomized controlled trials using ...
Traditionally, social scientists perceived causality as regularity. As a consequence, qualitative co...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Analysis of a large longitudinal study of children motivated our work. The results illustrate how ac...
Investigators are increasingly using novel methods for extending (generalizing or transporting) caus...
We attempt to clarify, and suggest how to avoid, several serious misunderstandings about and fallaci...
Traditionally, social scientists perceived causality as regularity. As a consequence, qualitative co...
Causation can be inferred by two distinct patterns of reasoning, each requiring a distinct experi-me...
Evidential pluralists, like Federica Russo and Jon Williamson, argue that causal claims should be co...
Learning from data which associations hold and are likely to hold in the future is a fundamental par...
We propose a new method to estimate causal effects from nonexperimental data. Each pair of sample un...
This manuscript includes three topics in causal inference, all of which are under the randomization ...
Case-control study designs are frequently used in public health and medical research to assess poten...
This dissertation presents three new methodologies for analyzing randomized controlled trials using ...
Traditionally, social scientists perceived causality as regularity. As a consequence, qualitative co...
Many problems in the empirical sciences and rational decision making require causal, rather than ass...