There is an increasing trend for researchers in the social sciences to draw causal conclusions from correlational data. Even researchers who use relatively causally neutral language in describing their findings, imply causation by including diagrams with arrows. Moreover, they typically make recommendations for intervention or other applications in their discussion sections, that would make no sense without an implicit assumption that the findings really do indicate causal pathways. The present manuscript commences with the generous assumption that regression-based procedures extract causation out of correlational data, with an exploration of the surprising effects of unreliability on causal conclusions. After discussing the pros and cons o...
Various lines of critique of quantitative psychology, well-established and new, are used to trace al...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...
Researchers rely on psychometric principles when trying to gain understanding of unobservable psycho...
Social scientists often estimate models from correlational data, where the independent variable has ...
For decades, statistical methods, many based upon the “general linear model,” have been used to do e...
Humans are fundamentally primed for making causal attributions based on correlations. This implies t...
We highlight the difference between valid causal indicator models, that provide useful information o...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
Researchers want to know whether the change in an explanatory variable X affects the change in a res...
A shared problem across the sciences is to make sense of correlational data coming from observations...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
This article argues that rather than using one technique to investigate regression results, research...
When it comes to causal conclusions, rigor matters. To this end we impose high standards for how stu...
Recent attempts to improve on the quality of psychological research focus on good practices required...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...
Various lines of critique of quantitative psychology, well-established and new, are used to trace al...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...
Researchers rely on psychometric principles when trying to gain understanding of unobservable psycho...
Social scientists often estimate models from correlational data, where the independent variable has ...
For decades, statistical methods, many based upon the “general linear model,” have been used to do e...
Humans are fundamentally primed for making causal attributions based on correlations. This implies t...
We highlight the difference between valid causal indicator models, that provide useful information o...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
Researchers want to know whether the change in an explanatory variable X affects the change in a res...
A shared problem across the sciences is to make sense of correlational data coming from observations...
BACKGROUND: Correlated data are ubiquitous in epidemiologic research, particularly in nutritional an...
This article argues that rather than using one technique to investigate regression results, research...
When it comes to causal conclusions, rigor matters. To this end we impose high standards for how stu...
Recent attempts to improve on the quality of psychological research focus on good practices required...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...
Various lines of critique of quantitative psychology, well-established and new, are used to trace al...
Causal questions drive scientific enquiry. From Hume to Granger, and Rubin to Pearl the history of s...
Researchers rely on psychometric principles when trying to gain understanding of unobservable psycho...