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Q: Econometric test for change in correlation ( Answered 5 out of 5 stars,   0 Comments )
Question  
Subject: Econometric test for change in correlation
Category: Science > Math
Asked by: ponderer-ga
List Price: $25.00
Posted: 01 Jul 2004 23:13 PDT
Expires: 31 Jul 2004 23:13 PDT
Question ID: 368824
* Background *
Currently working on a year long Masters thesis in Finance.  My
supervisors nor any of the econometrics professors were able to help
me with this question.  It will require knowledge of
econometrics/statistics to answer, rather than a web search.

* Question *
I have 30 years of monthly time series returns data for stockmarket
indices of two countries, a total of 360 observations.  Breaking the
data into two samples, 1972-1987, and 1988-2002 I find - as I expected
a priori - that the sample correlation between the markets is higher
in the second period.

I want to implement a test of whether the difference between the
sample correlation coefficients is statistically significant.  If the
difference between two sample correlations followed some known
distribution, I could do this myself but I don't know if it does.

As my supervisor said "This sounds like a standard sort of a problem,
surely there must be a test for that."  But I asked around and no-one
seemed to know.  It?s a little bit different to the usual, as the
econometrics of testing a correlation coefficient are not like testing
a slope coefficient.

I have an econometrics major but only at undergraduate level so an
answer I can understand understandable would be an advantageous -
though not essential as I have my supervisors to help interpret any
answer, and also another Professor I have already spoken to with a PhD
in financial statistics and option modelling.  I have econometrics
text books.  Unfortunately, he could only find a test for whether a
single sample correlation was zero.  That's not really appropriate
here ? as I am testing whether the difference between two sample
correlation coefficients is zero.  I?m not at all confident that the
distribution of a single sample correlation coefficient under the null
that the population coefficient equals zero, is therefore appropriate.

You can assume 
A1) the returns from the two countries are jointly normally
distributed, with equal variance for all countries and time periods
A2) the true population correlation stays the same within each of the
sample periods, except for the single change at some known date ? in
this case Jan 1988.

Thanks in advance.

* Extras *
NOT required to satisfactorily answer this question.  If you have an
answer to the base question - please do post it.

Comments on any of these issues will be appreciated and remunerated by
an extra tip.  The answerer can also post anything further which
springs to mind later as a Clarification of Answer if they wish ? I
will wait a few days after an answer is posted before rating it and
deciding on a tip.

1) I actually want to use this test more than once, applying it
separately to several pairs of countries.  While most have similar
sample variances, and i'm willing to assume therefore identical
population variances, a couple are a bit different.  The lowest sample
standard deviation was about 4% per month, and the highest % per
month.  So a test relying on the assumption of identical variance
might not be quite spot on for these countries.

2) Similarly to above, one countries sample variance decreased quite a
bit between the two periods.
3) In practice, I have found that across the top 5 countries, the
correlation increases in all 12 of them.  At the moment I am thinking
I probably will have to just test consider each "pairing"
individually.  I doubt very much there is a way of getting an
increased power of test by aggregating the data, though I would be
very interested to know if there is.
4) I might leave out the final quarter of 1987 from my analysis, as
it's a bit of an outlier due to the October 1987 stockmarket crash and
the reverbarations that followed.  I don't think this should
invalidate my test or be problematic, just reduce the sample size
marginally.
5) Perhaps there are other ways of testing whether markets tend to
move together rather than correlation.

Thank you!
Answer  
Subject: Re: Econometric test for change in correlation
Answered By: wonko-ga on 02 Jul 2004 12:59 PDT
Rated:5 out of 5 stars
 
The following reference provides the test you are seeking, along with
a program built into the web page to perform it.

"Two Correlation coefficients" Institute of Phonetic Sciences,
http://fonsg3.let.uva.nl/Service/Statistics/Two_Correlations.html

"This is a quite insensitive test to decide whether two correlations
have different strengths. In the standard tests for correlation, a
correlation coefficient is tested against the hypothesis of no
correlation, i.e., R = 0. It is possible to test whether the
correlation coefficient is equal to or different from another fixed
value, but this has few uses (when can you make a reasonable guess
about a correlation coefficient?). However, there are situations where
you would like to know whether a certain correlation strength realy is
different from another one.

H0:
Both samples of pairs show the same correlation strength, i.e., R1 = R2. 

Assumptions:
The values of both members of both samples of pairs are Normal
(bivariate) distributed.

Scale:
Interval (for the raw data). 

Procedure:
The two correlation coefficients are transformed with the Fisher
Z-transform ( Papoulis):

Zf = 1/2 * ln( (1+R) / (1-R) )

The difference

z = (Zf1 - Zf2) / SQRT( 1/(N1-3) + 1/(N2-3) )

is approximately Standard Normal distributed.
If both the correlation coefficient and the sample size of one of the
samples are equal to zero, the standard procedure for correlation
coefficients is used on the other values.

Level of Significance:
Use the z value to determine the level of significance. 

Approximation:
This is already an approximation which should be used only when both
samples (N1 and N2) are larger than 10."

The source code for the program built into the web page that performs
the test can be found here:

"Comparing Correlation coefficients"
http://www.fon.hum.uva.nl/rob/Statistics-tools/TwoCorrelation.pl

Here is another reference explaining this test:

"General FAQ #26: How to perform pairwise comparisons of sample
correlation coefficients" Information Technology Services
http://www.utexas.edu/its/rc/answers/general/gen26.html

You may also be interested in this test:

"General FAQ #28: How to compare sample correlation coefficients drawn
from the same sample."  Information Technology Services
http://www.utexas.edu/its/rc/answers/general/gen28.html

"Test for Equality of Several Correlation Coefficients" by Professor
Hossein Arsham http://home.ubalt.edu/ntsbarsh/Business-stat/otherapplets/MultiCorr.htm
provides another Web-based program to compare up to 14 correlation
coefficients

Here is a commercial software package with the test and some
commentary about interpreting its results:

"Comparison of correlation coefficients" MedCalc
http://www.medcalc.be/manual/mpage08-06.php

Sincerely,

Wonko
ponderer-ga rated this answer:5 out of 5 stars and gave an additional tip of: $1.00
Brilliant answer to my question, exactly what I needed.  Didn't deal
with optional extras hence just a small tip.  Thank you very much.

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