HP 48gII User Manual

Page 609

Advertising
background image

Page 18-38

deviation s = 3.5. We assume that we don't know the value of the population
standard deviation, therefore, we calculate a t statistic as follows:

7142

.

0

25

/

5

.

3

5

.

22

0

.

22

/

=

=

=

n

s

x

t

o

o

µ

The corresponding P-value, for n = 25 - 1 = 24 degrees of freedom is

P-value = 2

⋅UTPT(24,-0.7142) = 2⋅0.7590 = 1.5169,


since 1.5169 > 0.05, i.e., P-value >

α, we cannot reject the null hypothesis

H

o

:

µ = 22.0.


One-sided hypothesis
The problem consists in testing the null hypothesis H

o

:

µ = µ

o

, against the

alternative hypothesis, H

1

:

µ > µ

ο

or H

1

:

µ < µ

ο

at a level of confidence (1-

α)100%, or significance level α, using a sample of size n with a mean x and
a standard deviation s. This test is referred to as a one-sided or one-tailed
test. The procedure for performing a one-side test starts as in the two-tailed
test by calculating the appropriate statistic for the test (t

o

or z

o

) as indicated

above.

Next, we use the P-value associated with either z

ο

or t

ο

, and compare it to

α

to decide whether or not to reject the null hypothesis. The P-value for a two-
sided test is defined as either

P-value = P(z > |z

o

|), or, P-value = P(t > |t

o

|).


The criteria to use for hypothesis testing is:

Reject H

o

if P-value <

α

Do not reject H

o

if P-value >

α.


Notice that the criteria are exactly the same as in the two-sided test. The main
difference is the way that the P-value is calculated. The P-value for a one-
sided test can be calculated using the probability functions in the calculator as
follows:

Advertising
This manual is related to the following products: