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The escape time (sec) for oil workers in a simulated exercise, gave the sample mean 370.69, sample standard deviation 24.36, and number of observations as n =26. Suppose the investigators had believed a priori that true average escape time would be at most 6 minutes. Does the data contradict this prior belief? Assuming normality, test the appropriate hypothesis using a significance level of .05.

1 Answer

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Answer:

Null hypothesis:
\mu \leq 6

Alternative hypothesis:
\mu > 6

The statistic is given by:


t=(\bar X-\mu_o)/((s)/(√(n))) (1)

Replacing the info we got:


t=(6.178-6)/((0.68)/(√(26)))=1.335


p_v =P(t_(25)>1.335)=0.097

And for this case the p value is higher than the significance level so then we FAIL to reject the null hypothesis and we can conclude that the true mean is at most 6 minutes

Explanation:

Information given


\bar X=370.69/60 =6.178 represent the sample mean


s=24.36/36=0.68 represent the standard deviation for the sample


n=26 sample size


\mu_o =6 represent the value to verify


\alpha=0.05 represent the significance level

t would represent the statistic


p_v represent the p value

System of hypothesis

We want to test if the true mean is at least 6 minutes, the system of hypothesis would be:

Null hypothesis:
\mu \leq 6

Alternative hypothesis:
\mu > 6

The statistic is given by:


t=(\bar X-\mu_o)/((s)/(√(n))) (1)

Replacing the info we got:


t=(6.178-6)/((0.68)/(√(26)))=1.335

The degrees of freedom are:


df=n-1=26-1=25

The p value would be given by:


p_v =P(t_(25)>1.335)=0.097

And for this case the p value is higher than the significance level so then we FAIL to reject the null hypothesis and we can conclude that the true mean is at most 6 minutes.

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