Social scientists often estimate models from correlational data, where the independent variable has not been exogenously manipulated; they also make implicit or explicit causal claims based on these models. When can these claims be made? We answer this question by first discussing design and estimation conditions under which model estimates can be interpreted, using the randomized experiment as the gold standard. We show how endogeneity--which includes omitted variables, omitted selection, simultaneity, common methods bias, and measurement error--renders estimates causally uninterpretable. Second, we present methods that allow researchers to test causal claims in situations where randomization is not possible or when causal interpretation i...
We attempt to clarify, and suggest how to avoid, several serious misunderstandings about and fallaci...
Causal prescriptive statements are valued in the social sciences when there is the goal of helping p...
This study exposes the flaw in defining endogeneity bias by correlation between an explanatory varia...
Social scientists often estimate models from correlational data, where the independent variable has ...
Making correct causal claims is important for research and practice. This article explains what caus...
"Most quantitative empirical analyses are motivated by the desire to estimate the causal effect of a...
Most leadership and management researchers ignore one key design and estimation problem rendering pa...
Social scientists and policy makers continue to put increased emphasis on identifying causal effects...
This paper considers three different claims to knowledge, namely, “fully descriptive”, “generally de...
For obtaining causal inferences that are objective, and therefore have the best chance of revealing ...
Identifying causal mechanisms is a fundamental goal of social science. Researchers seek to study not...
For decades, statistical methods, many based upon the “general linear model,” have been used to do e...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Humans are fundamentally primed for making causal attributions based on correlations. This implies t...
A shared problem across the sciences is to make sense of correlational data coming from observations...
We attempt to clarify, and suggest how to avoid, several serious misunderstandings about and fallaci...
Causal prescriptive statements are valued in the social sciences when there is the goal of helping p...
This study exposes the flaw in defining endogeneity bias by correlation between an explanatory varia...
Social scientists often estimate models from correlational data, where the independent variable has ...
Making correct causal claims is important for research and practice. This article explains what caus...
"Most quantitative empirical analyses are motivated by the desire to estimate the causal effect of a...
Most leadership and management researchers ignore one key design and estimation problem rendering pa...
Social scientists and policy makers continue to put increased emphasis on identifying causal effects...
This paper considers three different claims to knowledge, namely, “fully descriptive”, “generally de...
For obtaining causal inferences that are objective, and therefore have the best chance of revealing ...
Identifying causal mechanisms is a fundamental goal of social science. Researchers seek to study not...
For decades, statistical methods, many based upon the “general linear model,” have been used to do e...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Humans are fundamentally primed for making causal attributions based on correlations. This implies t...
A shared problem across the sciences is to make sense of correlational data coming from observations...
We attempt to clarify, and suggest how to avoid, several serious misunderstandings about and fallaci...
Causal prescriptive statements are valued in the social sciences when there is the goal of helping p...
This study exposes the flaw in defining endogeneity bias by correlation between an explanatory varia...