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A sample of 1100 computer chips revealed that 70% of the chips do not fail in the first 1000 hours of their use. The company's promotional literature states that 73% of the chips do not fail in the first 1000 hours of their use. The quality control manager wants to test the claim that the actual percentage that do not fail is different from the stated percentage. Find the value of the test statistic. Round your answer to two decimal places.

User John Doah
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1 Answer

3 votes

Answer:


z=\frac{0.70 -0.73}{\sqrt{(0.73(1-0.73))/(1100)}}=-2.241


p_v =2*P(z>2.241)=0.025

So the p value obtained was a very low value and using the significance level given
\alpha=0.05 we have
p_v<\alpha so we can conclude that we have enough evidence to reject the null hypothesis, and we can said that at 5% of significance the proportion of chips do not fail in the first 1000 hours of their use is different from 0.73 at 5% of significance.

Explanation:

Data given and notation

n=1100 represent the random sample taken


\hat p=0.7 estimated proportion of chips do not fail in the first 1000 hours of their use


p_o=0.73 is the value that we want to test


\alpha represent the significance level

z would represent the statistic (variable of interest)


p_v represent the p value (variable of interest)

Concepts and formulas to use

We need to conduct a hypothesis in order to test the claim that the true proportion of interest is different from 0.73.:

Null hypothesis:
p=0.73

Alternative hypothesis:
p \\eq 0.73

When we conduct a proportion test we need to use the z statistic, and the is given by:


z=\frac{\hat p -p_o}{\sqrt{(p_o (1-p_o))/(n)}} (1)

The One-Sample Proportion Test is used to assess whether a population proportion
\hat p is significantly different from a hypothesized value
p_o.

Calculate the statistic

Since we have all the info requires we can replace in formula (1) like this:


z=\frac{0.70 -0.73}{\sqrt{(0.73(1-0.73))/(1100)}}=-2.241

Statistical decision

It's important to refresh the p value method or p value approach . "This method is about determining "likely" or "unlikely" by determining the probability assuming the null hypothesis were true of observing a more extreme test statistic in the direction of the alternative hypothesis than the one observed". Or in other words is just a method to have an statistical decision to fail to reject or reject the null hypothesis.

The significance level assumed for this case is
\alpha=0.05. The next step would be calculate the p value for this test.

Since is a bilateral test the p value would be:


p_v =2*P(z>2.241)=0.025

So the p value obtained was a very low value and using the significance level given
\alpha=0.05 we have
p_v<\alpha so we can conclude that we have enough evidence to reject the null hypothesis, and we can said that at 5% of significance the proportion of chips do not fail in the first 1000 hours of their use is different from 0.73 at 5% of significance.

User Michal Gallovic
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