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In probability theory and statistics, the correlation, also called correlation coefficient, between two
random variables is found by dividing their covariance by the product of their standard deviations. (It is defined only if these standard deviations are finite.) It is a corollary of
the Cauchy-Schwarz inequality that the
correlation cannot exceed 1 in absolute value.
The correlation is 1 in the case of an increasing linear relationship, −1 in the case of a decreasing linear
relationship, and some value in between in all other cases, indicating the degree of linear dependence between the variables. The
closer the coefficient is to either −1 or 1, the stronger the correlation between the variables.
If the variables are independent then the
correlation is 0, but the converse is not true because the correlation coefficient detects only linear dependencies between two
variables. Here is an example: Suppose the random variable X is uniformly distributed on the interval from −1 to
1, and Y = X2. Then Y is completely determined by X, so that X and
Y are as far from being independent as two random variables can be, but their correlation is zero; they are
uncorrelated.
"Correlation does not imply causation"
The conventional mantra that "correlation does not imply causation" is treated in the article titled spurious relationship, which see.
Statistical estimation of population correlations by sample correlations
If several values of X and Y have been measured, then the Pearson
product-moment correlation coefficient can be used to estimate the correlation of X and Y. The coefficient
is especially important if X and Y are both normally distributed and follow the linear
regression model.
Non-parametric statistics
Pearson's correlation coefficient is a parametric
statistic, and it may be less useful if the underlying assumption of normality is violated. Non-parametric correlation methods, such as Spearman's ρ and
Kendall's tau correlation coefficient may be useful when distributions are not
normal; they are a little less powerful than parametric methods if the assumptions underlying the latter are met, but are less
likely to give distorted results when the assumptions fail.
Other measures of dependence among random variables
To get a measure for more general dependencies in the data (also nonlinear) it is better to use the correlation ratio which is able to detect almost any functional
dependency, or mutual information which detects even more
general dependencies.
External link
- Statsoft Electronic Textbook
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