## Not looking for a lot of values between…. for true sig.

### If you are not looking for a lot of values between, it typically means that you need to narrow down the range or domain of the variables you are considering

If you are not looking for a lot of values between, it typically means that you need to narrow down the range or domain of the variables you are considering. In statistics or experimental studies, the concept of statistical significance is often used to determine if there is a significant difference between experimental groups or variables.

To achieve a true statistical significance, it is important to reduce the range of values and focus on a specific interval or threshold. By doing so, you can increase the power and accuracy of your statistical tests.

Here is an example to illustrate the concept:

Let’s say you are conducting a study to compare the heights of two different groups of people: Group A and Group B. You take a sample from each group and measure their heights.

To determine if there is a significant difference in heights between the two groups, you can perform a hypothesis test using statistical significance. However, if you consider a wide range of heights, the test may not be able to accurately detect a significant difference.

To address this, you can narrow down the range of heights you are looking at. For example, you could focus on heights within a specific range, such as between 160 cm and 180 cm. By doing so, you reduce the variability and increase the chances of detecting a true significant difference if it exists.

In summary, if you are not looking for a lot of values between for true statistical significance, you should consider narrowing down the range or domain of the variables you are analyzing to increase the power and accuracy of your statistical tests.

## More Answers:

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A comprehensive guide to determining significance in statistics: Hypothesis testing, test statistics, and interpreting results.