CHAPTER 15 Introducing Correlation and Regression 205
3.
Calculate the lower and upper 95 percent confidence limits for r:
r
e
e
r
e
Lower
Upper
/
(
) (
)
.
(
(
.
)
(
.
)
.
2
2
2
0 104
0 104
1
1
1
0 104
203
1 203
1
1
0 835
2
) (
)
.
.
/ e
Notice that the 95 percent confidence interval goes from – .0 104 to 0 835
.
, a range
that includes the value zero. This means that the true r value could indeed be zero,
which is consistent with the non-significant p value of 0.098 that you obtained
from the significance test of r in the preceding section.
Determining whether two r values are
statistically significantly different
Suppose that you have two correlation coefficients and you want to test whether
they are statistically significantly different. It doesn’t matter whether the two r
values are based on the same variables or are from the same group of participants.
Imagine that a significance test for comparing two correlation coefficient values
(which we will call r1 and r2) that were obtained from N1 and N 2 participants,
respectively. You can utilize the Fisher z transformation to get z1 and z2. The dif-
ference (z
z
1
2) has a standard error (SE) of SE
N
N
z
z
2
1
1
3
1
3
1
2
/
/
.
You obtain the test statistic for the comparison by dividing the difference by its
SE. You can convert this to a p value by referring to a table (or web page) of the
normal distribution.
For example, if you want to compare an r1 value of 0.4 based on an N1 of 100 par-
ticipants with an r2 value of 0.6 based on an N2 of 150 participants, you perform the
following steps:
1.
Calculate the Fisher z transformation of each observed r value:
z
z
1
2
1
2
1
0 4
1
0 4
0 424
1
2
1
0 6
1
0 6
0
log
.
.
.
log
.
.
/
/
..693
2.
Calculate the (z
z
2
1) difference:
0 693
0 424
0 269
.
.
.
3.
Calculate the SE of the (z
z
2
1) difference:
SE z
z
2
1
1
100
3
1
150
3
0 131
/
/
.