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Ecological correlation
Correlation between two variables that are group means
Correlation between two variables that are group means
In statistics, an ecological correlation (also spatial correlation) is a correlation between two variables that are group means, in contrast to a correlation between two variables that describe individuals. For example, one might study the correlation between physical activity and weight among sixth-grade children. A study at the individual level might make use of 100 children, then measure both physical activity and weight; the correlation between the two variables would be at the individual level. By contrast, another study might make use of 100 classes of sixth-grade students, then measure the mean physical activity and the mean weight of each of the 100 classes. A correlation between these group means would be an example of an ecological correlation.
Because a correlation describes the measured strength of a relationship, correlations at the group level can be much higher than those at the individual level. Thinking both are equal is an example of ecological fallacy.
References
References
- Robinson, W. S.. (1950). "Ecological Correlations and the Behavior of Individuals". [[American Sociological Review]].
- Vogt, W. Paul. (2011). "Dictionary of Statistics & Methodology: A Nontechnical Guide for the Social Sciences". Sage.
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