We describe a means of rejecting a null hypothesis concerning observed, but not deliberately manipulated, variables of the form H0: A -/-> B in favor of an alternative hypothesis HA: A --> B, even given the possibility of causally related unobserved variables. Rejection of such an H0 relies on the availability of two observed and appropriately related instrumental variables. While the researcher will have limited control over the confidence level in this test, simulation results suggest that type I errors occur with a probability of less than 0.15 (often substantially less) across a wide range of circumstances. The power of the test is limited if there are but few observations available and the strength of correspondence among the variables...
Causality tests developed by Sims and Granger are fatally flawed for several reasons First, when two...
Causality tests developed by Sims and Granger are fatally flawed for several reasons First, when two...
Identifying causal mechanisms is a fundamental goal of social science. Researchers seek to study not...
We describe a means of rejecting a null hypothesis concerning observed, but not deliberately manipul...
Economic theory is replete with causal hypotheses that are scarcely tested because economists are ge...
Economic theory is replete with causal hypotheses that are scarcely tested because economists are ge...
Abstract: Economic theory is replete with causal hypotheses that are scarcely tested because econom...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
Detection of a causal relationship between two or more sets of data is an important problem across v...
This study demonstrates the existence of a testable condition for the identification of the causal e...
Abstract: "The problem of inferring causal relations from statistical data in the absence of experim...
We study one of the simplest causal prediction algorithms that uses only conditional independences e...
Social scientists and policy makers continue to put increased emphasis on identifying causal effects...
Social scientists and policy makers continue to put increased emphasis on identifying causal effects...
Causality tests developed by Sims and Granger are fatally flawed for several reasons First, when two...
Causality tests developed by Sims and Granger are fatally flawed for several reasons First, when two...
Identifying causal mechanisms is a fundamental goal of social science. Researchers seek to study not...
We describe a means of rejecting a null hypothesis concerning observed, but not deliberately manipul...
Economic theory is replete with causal hypotheses that are scarcely tested because economists are ge...
Economic theory is replete with causal hypotheses that are scarcely tested because economists are ge...
Abstract: Economic theory is replete with causal hypotheses that are scarcely tested because econom...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
Detection of a causal relationship between two or more sets of data is an important problem across v...
This study demonstrates the existence of a testable condition for the identification of the causal e...
Abstract: "The problem of inferring causal relations from statistical data in the absence of experim...
We study one of the simplest causal prediction algorithms that uses only conditional independences e...
Social scientists and policy makers continue to put increased emphasis on identifying causal effects...
Social scientists and policy makers continue to put increased emphasis on identifying causal effects...
Causality tests developed by Sims and Granger are fatally flawed for several reasons First, when two...
Causality tests developed by Sims and Granger are fatally flawed for several reasons First, when two...
Identifying causal mechanisms is a fundamental goal of social science. Researchers seek to study not...