Diff for "FAQ/WilliamsSPSS" - CBU statistics Wiki
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A variable in common (overlap) e.g. of form r(W,X) = r(W,Z).   A variable in common (overlap) e.g. of form r(W,X) = r(W,Z).
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A test for this comparison goes under various names the Williams test, Williams-Hotelling or Hotelling test.  A test for this comparison goes under various names the Williams test, Williams-Hotelling or Hotelling test.
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 This can be implemented using SPSS syntax provided at http://www.utexas.edu/its/rc/answers/general/gen28.html .  . This can be implemented using SPSS syntax provided at http://www.utexas.edu/its/rc/answers/general/gen28.html .
An example of its use together with syntax is given below. Just cut and paste into a SPSS syntax window to use. In the syntax choose select all and click the run arrow. Edit the data in the spreadsheet as required. You can also use the Williams-Hotelling test by typing '''equalcor''' at a UNIX prompt on a CBU machine.
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An example of its use together with syntax is given below. Just cut and paste into a SPSS syntax window to use. You can also use the Williams-Hotelling test by typing '''equalcor''' at a UNIX prompt on a CBU machine.
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******** this input is inputted in the macro call at end of this syntax********* ************ this input is inputted in the macro call at end of this syntax*********
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/r12 r13 r23 nsize.
/r12 r13 r23  nsize.
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 ***************macro and macro call**************
 **** tests if rxy=rvy and outputs a t-statistic plus one and two-tailed p-values
***************macro and macro call**************
**** tests if rxy=rvy and outputs a t-statistic plus one and two-tailed p-values
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 define williams (rxy = !tokens(1) define williams (rxy = !tokens(1)
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 COMPUTE #diffr = !rxy - !rvy. COMPUTE #diffr = !rxy - !rvy.
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 COMPUTE #detR = (1 - !rxy **2 - !rvy**2 - !rxv**2)+ (2*!rxy*!rxv*!rvy).
 *Calculate (rxy + rvy)^2 .
 COMPUTE #rbar = (!rxy + !rvy)/2.
COMPUTE #detR = (1 - !rxy **2 - !rvy**2 - !rxv**2)+ (2*!rxy*!rxv*!rvy).
*Calculate (rxy + rvy)^2 .
COMPUTE #rbar = (!rxy + !rvy)/2.
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 * Calculate numerator of t statistic.
 COMPUTE #tnum = (#diffr) * (sqrt((!n-1)*(1 + !rxv))).
* Calculate numerator of t statistic.
COMPUTE #tnum = (#diffr) * (sqrt((!n-1)*(1 + !rxv))).
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 COMPUTE #tden = sqrt(2*((!n-1)/(!n-3))*#detR + ((#rbar**2) * ((1-!rxv)**3))). COMPUTE #tden = sqrt(2*((!n-1)/(!n-3))*#detR + ((#rbar**2) * ((1-!rxv)**3))).
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 COMPUTE t= (#tnum/#tden).
 COMPUTE df = !n - 3.
COMPUTE t= (#tnum/#tden).
COMPUTE df = !n - 3.
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 * Evaluate the value of the t statistic.
 * against a t distribution with n - 3 degrees if freedom for.
 * statistical significance.
 COMPUTE p_1_tail = 1 - CDF.T(abs(t),df).
 COMPUTE p_2_tail = (1 - CDF.T(abs(t),df))*2.
* Evaluate the value of the t statistic.
* against a t distribution with n - 3 degrees if freedom for.
* statistical significance.
COMPUTE p_1_tail = 1 - CDF.T(abs(t),df).
COMPUTE p_2_tail = (1 - CDF.T(abs(t),df))*2.
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 * Print the results.
 LIST t df p_1_tail p_2_tail.
 exe.
 !enddefine.
* Print the results.
LIST t  df p_1_tail p_2_tail.
exe.
!enddefine.
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 ********************* *********************
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 williams rxy=r12 rvy=r13 rxv=r23 n=nsize. williams rxy=r12 rvy=r13 rxv=r23 n=nsize.

A variable in common (overlap) e.g. of form r(W,X) = r(W,Z).

A test for this comparison goes under various names the Williams test, Williams-Hotelling or Hotelling test.

An example of its use together with syntax is given below. Just cut and paste into a SPSS syntax window to use. In the syntax choose select all and click the run arrow. Edit the data in the spreadsheet as required. You can also use the Williams-Hotelling test by typing equalcor at a UNIX prompt on a CBU machine.

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* Dependent Correlation Comparison Program. * Compares correlation coefficients from the same sample. * See Cohen & Cohen (1983), p. 57. * Sam Field, sfield@mail.la.utexas.edu, March 1, 2000.

************ this input is inputted in the macro call at end of this syntax********* * Three pairs of correlations to compare*****

set format f10.5. DATA LIST free /r12 r13 r23 nsize. BEGIN DATA .50 .32 .65 50 .59 .31 .71 30 .80 .72 .89 26 END DATA.

***************macro and macro call************** **** tests if rxy=rvy and outputs a t-statistic plus one and two-tailed p-values

define williams (rxy = !tokens(1)

  • /rvy = !tokens(1) /rxv = !tokens(1) /n = !tokens(1)).

COMPUTE #diffr = !rxy - !rvy.

COMPUTE #detR = (1 - !rxy **2 - !rvy**2 - !rxv**2)+ (2*!rxy*!rxv*!rvy). *Calculate (rxy + rvy)^2 . COMPUTE #rbar = (!rxy + !rvy)/2.

* Calculate numerator of t statistic. COMPUTE #tnum = (#diffr) * (sqrt((!n-1)*(1 + !rxv))).

COMPUTE #tden = sqrt(2*((!n-1)/(!n-3))*#detR + ((#rbar**2) * ((1-!rxv)**3))).

COMPUTE t= (#tnum/#tden). COMPUTE df = !n - 3.

* Evaluate the value of the t statistic. * against a t distribution with n - 3 degrees if freedom for. * statistical significance. COMPUTE p_1_tail = 1 - CDF.T(abs(t),df). COMPUTE p_2_tail = (1 - CDF.T(abs(t),df))*2.

* Print the results. LIST t df p_1_tail p_2_tail. exe. !enddefine.

*********************

williams rxy=r12 rvy=r13 rxv=r23 n=nsize.

None: FAQ/WilliamsSPSS (last edited 2021-04-09 11:33:29 by PeterWatson)