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A matched pairs experiment is carried out, yielding the following data:

n_D = 58, mean of difference = -1.2, s_D = 7.6
Is there evidence, at an alpha = 0.045 level of significance to conclude that there is a difference between the two sets of measurements? Carry out an appropriate hypothesis test, filling in the information requested.
A. The value of the standardized test statistic:
B. The rejection region for the standardized test statistic:
C. The p value is
D. your decision for the hypothesis test:

User Lulliezy
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To determine if there is a difference between the two sets of measurements, we perform a matched pairs t-test. The value of the standardized test statistic is -2.262 and falls within the rejection region. The p-value is less than 0.045, providing strong evidence against the null hypothesis.

To determine if there is a difference between the two sets of measurements, we can perform a matched pairs t-test. Let's set up the null and alternative hypotheses:

Null hypothesis (H0): There is no difference between the two sets of measurements (μd = 0)

Alternative hypothesis (Ha): There is a difference between the two sets of measurements (μd ≠ 0)

To calculate the test statistic, we use the formula: t = (mean of difference - hypothesized mean) / (standard deviation of difference / sqrt(n)), where n is the sample size.

In this case, the mean of difference is -1.2, the hypothesized mean is 0, and the standard deviation of difference is 7.6. The sample size is 58. Plugging in these values, we get t = (-1.2 - 0) / (7.6 / sqrt(58)). Calculating this, we find that the value of the standardized test statistic is -2.262.

To determine the rejection region, we need to find the critical value for a two-tailed test with alpha = 0.045 and 57 degrees of freedom (because n-1 = 58-1 = 57). Looking up the critical value in the t-table, we find that it is approximately ±2.001.

The p-value is the probability of observing a test statistic as extreme as the one calculated (or more extreme), assuming the null hypothesis is true. To find the p-value, we can use a t-table or a t-distribution calculator. For a two-tailed test, we multiply the obtained p-value by 2. In this case, the p-value is less than 0.045, indicating strong evidence against the null hypothesis.

Based on the calculated test statistic, the rejection region, and the p-value, we can conclude that there is evidence, at an alpha = 0.045 level of significance, to conclude that there is a difference between the two sets of measurements.

User Vicolored
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