Namespaces
Variants
Actions

Partial correlation coefficient

From Encyclopedia of Mathematics
Jump to: navigation, search
The printable version is no longer supported and may have rendering errors. Please update your browser bookmarks and please use the default browser print function instead.

2020 Mathematics Subject Classification: Primary: 62-XX [MSN][ZBL]

A partial correlation coefficient is a measure of the linear dependence of a pair of random variables from a collection of random variables in the case where the influence of the remaining variables is eliminated. More precisely, suppose that the random variables $X_1,\dots,X_n$ have a joint distribution in $\R^n$, and let $X^*_{1;3\dots n}$, $X^*_{2;3\dots n}$ be the best linear approximations to the variables $X_1$ and $X_2$ based on the variables $X_3,\dots,X_n$. Then the partial correlation coefficient between $X_1$ and $X_2$, denoted by $\rho_{12;3\dots n}$, is defined as the ordinary correlation coefficient between the random variables $Y_1 = X_1 - X^*_{1;3\dots n}$ and $Y_2 = X_2 - X^*_{2;3\dots n}$:

$$\rho_{12;3\dots n} = \frac{\mathrm{E}\{(Y_1- \mathrm{E}Y_1)(Y_2- \mathrm{E}Y_2)\}}{\sqrt{\mathrm{D}Y_1\mathrm{D}Y_2}}.$$ It follows from the definition that $-1 \le \rho_{12;3\dots n}\le 1$. The partial correlation coefficient can be expressed in terms of the entries of the correlation matrix. Let $P=\|\rho_{ij}\|$, where $\rho_{ij}$ is the correlation coefficient between $X_i$ and $X_j$, and let $P_{ij}$ be the cofactor of the element $\rho_{ij}$ in the determinant $|P|$; then

$$\rho_{12;3\dots n} = - \frac{P_{12}}{\sqrt{P_{11} P_{22}}}.$$ For example, for $n=3$,

$$\rho_{12;3} = - \frac{\rho_{12}\rho_{33} - \rho_{13}\rho_{23}}{\sqrt{(1-\rho_{13}^2)(1-\rho_{23}^2)}}.$$ The partial correlation coefficient of any two variables $X_i,\; X_j$ from $X_1,\dots,X_n$ is defined analogously. In general, the partial correlation coefficient $\rho_{12;3\dots n}$ is different from the (ordinary) correlation coefficient $\rho_{12}$ of $X_1$ and $X_2$. The difference between $\rho_{12;3\dots n}$ and $\rho_{12}$ indicates whether $X_1$ and $X_2$ are dependent, or whether the dependence between them is a consequence of the dependence of each of them on $X_3,\dots,X_n$. If the variables $X_1,\dots,X_n$ are pairwise uncorrelated, then all partial correlation coefficients are zero.

The empirical analogue of the partial correlation coefficient $\rho_{12;3\dots n}$, the empirical partial correlation coefficient or sample partial correlation coefficient is the statistic

$$r_{12;3\dots n} = - \frac{R_{12}}{\sqrt{R_{11}R_{22}}},$$ where $R_{ij}$ is the cofactor in the determinant of the matrix $R=\|r_{ij}\|$ of the empirical correlation coefficients $r_{ij}$. If the results of the observations are independent and multivariate normally distributed, and $\rho_{12;3\dots n}$, then $r_{12;3\dots n}$ is distributed according to the probability density

$$\frac{1}{\sqrt{\pi}} \frac{\Gamma((N-n+1)/2)}{\Gamma((N-n)/2)}(1-x^2)^{(N-n-2)/2}, \quad -1<x<1$$ ($N$ is the sample size). To test hypotheses about partial correlation coefficients, one uses the fact that the statistic

$$t=\sqrt{N-n}\frac{r}{\sqrt{1-r^2}},\quad \textrm{where}\ r = r_{12;3\dots n},$$ has, under the stated conditions, a Student distribution with $N-n$ degrees of freedom.

References

[Cr] H. Cramér, "Mathematical methods of statistics", Princeton Univ. Press (1946) MR0016588 Zbl 0063.01014
[KeSt] M.G. Kendall, A. Stuart, "The advanced theory of statistics", 2. Inference and relationship, Griffin (1979) MR0474561 MR0243648 Zbl 0416.62001
[Mu] R.J. Muirhead, "Aspects of multivariate statistical theory", Wiley (1982) MR0652932 Zbl 0556.62028
How to Cite This Entry:
Partial correlation coefficient. Encyclopedia of Mathematics. URL: http://encyclopediaofmath.org/index.php?title=Partial_correlation_coefficient&oldid=24254
This article was adapted from an original article by A.V. Prokhorov (originator), which appeared in Encyclopedia of Mathematics - ISBN 1402006098. See original article