In statistics, Cochran's theorem, devised by William G. Cochran,[1] is a theorem used to justify results relating to the probability distributions of statistics that are used in the analysis of variance.[2]

Examples edit

Sample mean and sample variance edit

If X1, ..., Xn are independent normally distributed random variables with mean μ and standard deviation σ then

 

is standard normal for each i. Note that the total Q is equal to sum of squared Us as shown here:

 

which stems from the original assumption that  . So instead we will calculate this quantity and later separate it into Qi's. It is possible to write

 

(here   is the sample mean). To see this identity, multiply throughout by   and note that

 

and expand to give

 

The third term is zero because it is equal to a constant times

 

and the second term has just n identical terms added together. Thus

 

and hence

 

Now   with   the matrix of ones which has rank 1. In turn   given that  . This expression can be also obtained by expanding   in matrix notation. It can be shown that the rank of   is   as the addition of all its rows is equal to zero. Thus the conditions for Cochran's theorem are met.

Cochran's theorem then states that Q1 and Q2 are independent, with chi-squared distributions with n − 1 and 1 degree of freedom respectively. This shows that the sample mean and sample variance are independent. This can also be shown by Basu's theorem, and in fact this property characterizes the normal distribution – for no other distribution are the sample mean and sample variance independent.[3]

Distributions edit

The result for the distributions is written symbolically as

 
 

Both these random variables are proportional to the true but unknown variance σ2. Thus their ratio does not depend on σ2 and, because they are statistically independent. The distribution of their ratio is given by

 

where F1,n − 1 is the F-distribution with 1 and n − 1 degrees of freedom (see also Student's t-distribution). The final step here is effectively the definition of a random variable having the F-distribution.

Estimation of variance edit

To estimate the variance σ2, one estimator that is sometimes used is the maximum likelihood estimator of the variance of a normal distribution

 

Cochran's theorem shows that

 

and the properties of the chi-squared distribution show that

 

Alternative formulation edit

The following version is often seen when considering linear regression.[4] Suppose that   is a standard multivariate normal random vector (here   denotes the n-by-n identity matrix), and if   are all n-by-n symmetric matrices with  . Then, on defining  , any one of the following conditions implies the other two:

  •  
  •   (thus the   are positive semidefinite)
  •   is independent of   for  


Statement edit

Let U1, ..., UN be i.i.d. standard normally distributed random variables, and  . Let  be symmetric matrices. Define ri to be the rank of  . Define  , so that the Qi are quadratic forms. Further assume  .

Cochran's theorem states that the following are equivalent:

Often it's stated as  , where   is idempotent, and   is replaced by  . But after an orthogonal transform,  , and so we reduce to the above theorem.

Proof edit

Claim: Let   be a standard Gaussian in  , then for any symmetric matrices  , if   and   have the same distribution, then   have the same eigenvalues (up to multiplicity).

Proof

Let the eigenvalues of   be  , then calculate the characteristic function of  . It comes out to be

 

(To calculate it, first diagonalize  , change into that frame, then use the fact that the characteristic function of the sum of independent variables is the product of their characteristic functions.)

For   and   to be equal, their characteristic functions must be equal, so   have the same eigenvalues (up to multiplicity).

Claim:  .

Proof

 . Since   is symmetric, and  , by the previous claim,   has the same eigenvalues as 0.

Lemma: If  , all   symmetric, and have eigenvalues 0, 1, then they are simultaneously diagonalizable.

Proof

Fix i, and consider the eigenvectors v of   such that  . Then we have  , so all  . Thus we obtain a split of   into  , such that V is the 1-eigenspace of  , and in the 0-eigenspaces of all other  . Now induct by moving into  .

Now we prove the original theorem. We prove that the three cases are equivalent by proving that each case implies the next one in a cycle ( ).

Proof

Case: All   are independent

Fix some  , define  , and diagonalize   by an orthogonal transform  . Then consider  . It is diagonalized as well.

Let  , then it is also standard Gaussian. Then we have

 

Inspect their diagonal entries, to see that   implies that their nonzero diagonal entries are disjoint.

Thus all eigenvalues of   are 0, 1, so   is a   dist with   degrees of freedom.

Case: Each   is a   distribution.

Fix any  , diagonalize it by orthogonal transform  , and reindex, so that  . Then   for some  , a spherical rotation of  .

Since  , we get all  . So all  , and have eigenvalues  .

So diagonalize them simultaneously, add them up, to find  .

Case:  .

We first show that the matrices B(i) can be simultaneously diagonalized by an orthogonal matrix and that their non-zero eigenvalues are all equal to +1. Once that's shown, take this orthogonal transform to this simultaneous eigenbasis, in which the random vector   becomes  , but all   are still independent and standard Gaussian. Then the result follows.

Each of the matrices B(i) has rank ri and thus ri non-zero eigenvalues. For each i, the sum   has at most rank  . Since  , it follows that C(i) has exactly rank N − ri.

Therefore B(i) and C(i) can be simultaneously diagonalized. This can be shown by first diagonalizing B(i), by the spectral theorem. In this basis, it is of the form:

 

Thus the lower   rows are zero. Since  , it follows that these rows in C(i) in this basis contain a right block which is a   unit matrix, with zeros in the rest of these rows. But since C(i) has rank N − ri, it must be zero elsewhere. Thus it is diagonal in this basis as well. It follows that all the non-zero eigenvalues of both B(i) and C(i) are +1. This argument applies for all i, thus all B(i) are positive semidefinite.

Moreover, the above analysis can be repeated in the diagonal basis for  . In this basis   is the identity of an   vector space, so it follows that both B(2) and   are simultaneously diagonalizable in this vector space (and hence also together with B(1)). By iteration it follows that all B-s are simultaneously diagonalizable.

Thus there exists an orthogonal matrix   such that for all  ,   is diagonal, where any entry   with indices  ,  , is equal to 1, while any entry with other indices is equal to 0.


See also edit

References edit

  1. ^ a b Cochran, W. G. (April 1934). "The distribution of quadratic forms in a normal system, with applications to the analysis of covariance". Mathematical Proceedings of the Cambridge Philosophical Society. 30 (2): 178–191. doi:10.1017/S0305004100016595.
  2. ^ Bapat, R. B. (2000). Linear Algebra and Linear Models (Second ed.). Springer. ISBN 978-0-387-98871-9.
  3. ^ Geary, R.C. (1936). "The Distribution of "Student's" Ratio for Non-Normal Samples". Supplement to the Journal of the Royal Statistical Society. 3 (2): 178–184. doi:10.2307/2983669. JFM 63.1090.03. JSTOR 2983669.
  4. ^ "Cochran's Theorem (A quick tutorial)" (PDF).
  5. ^ "Cochran's theorem", A Dictionary of Statistics, Oxford University Press, 2008-01-01, doi:10.1093/acref/9780199541454.001.0001/acref-9780199541454-e-294, ISBN 978-0-19-954145-4, retrieved 2022-05-18