Respuesta :
Answer:
a) Null hypothesis:[tex]\mu \geq 120[/tex]
Alternative hypothesis:[tex]\mu < 120[/tex]
b)[tex]z=\frac{115-120}{\frac{22}{\sqrt{36}}}=-1.36[/tex]
[tex]p_v =P(Z<-1.36)=0.0869[/tex]
c)We don't have a significance level provided but at 1% of 5% of significance we can conclude that the true mean for the breaking distance is not significantly different from 120 since the p value is higher than the significance levels assumed.
d) At 5% of significance the critical value is [tex]z_{crit}= -1.64[/tex] and since the calculated statistic is not lower than the critical value we don't have enough evidence to conclude that the true mean is significanylt less than 120 ft
At 1% of significance the critical value is [tex]z_{crit}= -2.33[/tex] and since the calculated statistic is not lower than the critical value we don't have enough evidence to conclude that the true mean is significanylt less than 120 ft
Step-by-step explanation:
Information given by the problem
[tex]\bar X=115[/tex] represent the sample mean for the breaking distance
[tex]\sigma=22[/tex] represent the sample population deviation
[tex]n=36[/tex] sample size selected
[tex]\mu_o =120[/tex] represent the value to verify
t would represent the statistic
[tex]p_v[/tex] represent the p value
Part a
We want to conduct a test in order to see if the average braking distance for a small car traveling at 65 miles per hour is less than 120 feet, the system of hypothesis would be:
Null hypothesis:[tex]\mu \geq 120[/tex]
Alternative hypothesis:[tex]\mu < 120[/tex]
Part b
Since we know the population deviation we can calculate the statistic like this:
[tex]z=\frac{\bar X-\mu_o}{\frac{\sigma}{\sqrt{n}}}[/tex] (1)
Replacing the data given we got:
[tex]z=\frac{115-120}{\frac{22}{\sqrt{36}}}=-1.36[/tex]
Now we can calculate the p value, we have a left tailed test then p value would be:
[tex]p_v =P(Z<-1.36)=0.0869[/tex]
Part c
We don't have a significance level provided but at 1% of 5% of significance we can conclude that the true mean for the breaking distance is not significantly different from 120 since the p value is higher than the significance levels assumed.
Part d
For this case we need to find a critical value in the normal standard distribution who accumulates the significance level [tex]\alpha[/tex] in the left of the distribution.
At 5% of significance the critical value is [tex]z_{crit}= -1.64[/tex] and since the calculated statistic is not lower than the critical value we don't have enough evidence to conclude that the true mean is significanylt less than 120 ft
At 1% of significance the critical value is [tex]z_{crit}= -2.33[/tex] and since the calculated statistic is not lower than the critical value we don't have enough evidence to conclude that the true mean is significanylt less than 120 ft