Specify the confidence level for the confidence interval, define the alternative hypothesis, or specify the null hypothesis.
In Confidence level, enter the level of confidence for the confidence interval.
Usually, a confidence level of 95% works well. A 95% confidence level indicates that, if you take 100 random samples from the population, the confidence intervals for approximately 95 of the samples will contain the population parameter.
Enter a value in Hypothesized difference. The hypothesized difference defines your null hypothesis. Think of this value as a target value or a reference value. For example, an analyst enters 10 to test whether patients weights before and after a weight loss program differ by at least 10 pounds. (H0: μd = 10).
Use this one-sided test to determine whether the difference in paired means between sample 1 and sample 2 is less than the hypothesized difference, and to get an upper bound. This one-sided test has greater power than a two-sided test, but it cannot detect whether the difference is greater than the hypothesized difference.
For example, a baker tests uses this one-sided test to determine whether bread that is baked at a lower temperature for more time contains less moisture. The baker divides samples from a single batch of dough in half and bakes each half at different temperatures for different times. This one-sided test has greater power to determine whether the bread baked at a lower temperature has less moisture, but it cannot detect whether the bread contains more moisture.
Use this two-sided test to determine whether the difference in paired means is different from the hypothesized difference, and to get a two-sided confidence interval. This two-sided test can detect differences that are less than or greater than the hypothesized difference, but it has less power than a one-sided test.
For example, an engineer compares the difference in measurements of the same bearings made with 2 different calipers. Because any difference in the measurements is important, the engineer uses this two-sided test to determine whether the difference is greater than or less than 0.
Use this one-sided test to determine whether the difference between paired means between sample 1 and sample 2 is greater than the hypothesized difference and to get an upper bound. This one-sided test has greater power than a two-sided test, but it cannot detect whether the difference is less than the hypothesized difference.
For example, a quality analysis uses this one-sided test to determine whether treated wood beams are stronger than untreated beams. Each beam is cut in half; one half is treated and the other half is untreated. This one-sided test has greater power to determine whether the treated wood beams are stronger than the untreated beams, but it cannot detect whether the treated beams are less strong than the untreated beams.
For more information on selecting a one-sided or two-sided alternative hypothesis, go to About the null and alternative hypotheses.