Chance News 104: Difference between revisions
Emilfriedman (talk | contribs) (Transitivity, Correlation and Causation) |
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Theorem 1 of the article cited by Paul Alper in the previous issue, | Theorem 1 of the article cited by Paul Alper in the previous issue, [http://www.jstor.org/discover/10.2307/2685695?sid=21105654939673&uid=4&uid=2&uid=3739256&uid=3739736 "Is the Property of Being Positively Correlated Transitive?"] (The American Statistician, Vol. 55, No. 4, November, 2001), depends on the existence of non-observed independent random variables U, V, and W which ''cause'' the correlations between X=U+V, Y=W+V, and Z=W-U to be non-transitive. An interesting question is whether this relates back to the difference between causation and correlation. | ||
The surprising answer is, no, we can get the same sort of result even in the presence of causative relationships between X, Y and Z. Here’s an example: | The surprising answer is, no, we can get the same sort of result even in the presence of causative relationships between X, Y and Z. Here’s an example: | ||
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X is N(0,1). Y=X+U where U is N(0,1) and independent of X. Z=Y-1.5*X. | X is N(0,1). Y=X+U where U is N(0,1) and independent of X. Z=Y-1.5*X. | ||
Submitted by Emil M Friedman | The correlation coefficients between X and Y and between Y and Z are both positive but the correlation coefficient between X and Z is negative. | ||
Stan Lipopvetsky’s [http://www.tandfonline.com/doi/abs/10.1198/000313002551#.VQHtoY7F8jw follow-up letter] (''The American Statistician'', 56:4, 341-342, 2002) hints at this but does not include an actual example. | |||
Submitted by [http://www.statisticalconsulting.org Emil M Friedman] | |||
==Item 2== | ==Item 2== |
Revision as of 19:57, 12 March 2015
Quotations
Forsooth
Transitivity, Correlation and Causation
Theorem 1 of the article cited by Paul Alper in the previous issue, "Is the Property of Being Positively Correlated Transitive?" (The American Statistician, Vol. 55, No. 4, November, 2001), depends on the existence of non-observed independent random variables U, V, and W which cause the correlations between X=U+V, Y=W+V, and Z=W-U to be non-transitive. An interesting question is whether this relates back to the difference between causation and correlation.
The surprising answer is, no, we can get the same sort of result even in the presence of causative relationships between X, Y and Z. Here’s an example:
X is N(0,1). Y=X+U where U is N(0,1) and independent of X. Z=Y-1.5*X.
The correlation coefficients between X and Y and between Y and Z are both positive but the correlation coefficient between X and Z is negative.
Stan Lipopvetsky’s follow-up letter (The American Statistician, 56:4, 341-342, 2002) hints at this but does not include an actual example.
Submitted by Emil M Friedman