Similarly, significance tests about the value of can be easily carried out with
use of as the test statistic.
An important special case of the above is the test of H 0 : 0 against
H 1 : 0. This particular situation corresponds essentially to the significance
test of linear regression. Accepting H 0 is equivalent to concluding that there is
no reason to accept a linear relationship between E Y and x at a specified
significance level. In many cases, this may indicate the lack of a causal
relationship between E Y and independent variable x.
Example 11.5.Problem: it is speculated that the starting salary of a clerk is a
function of the clerk’s height. Assume that salary (Y) is normally distributed and
its mean is linearly related to height (x); use the data given in Table 11.3 to test
the assumption that E Y and x are linearly related at the 5% significance level.
Answer: in this case, we wish to test H 0 : 0 against H 1 0,with 0:05.
F rom the data in Table 11.3, we have
According to Equation (11.44), we have
Table 11. 3 Salary, y (in $10 000), with height, x (in feet),
for Example 11.5
x 5.7 5.7 5.7 5.7 6.1 6.1 6.1 6.1
y 2.25 2.10 1.90 1.95 2.40 1.95 2.10 2.25
Linear Models and Linear Regression 353
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