Table of Contents
What does a significance level of 0.01 mean?
Significance Levels. The significance level for a given hypothesis test is a value for which a P-value less than or equal to is considered statistically significant. Typical values for are 0.1, 0.05, and 0.01. These values correspond to the probability of observing such an extreme value by chance.
What does p-value 0.1 mean?
The smaller the p-value, the stronger the evidence for rejecting the H0. This leads to the guidelines of p < 0.001 indicating very strong evidence against H0, p < 0.01 strong evidence, p < 0.05 moderate evidence, p < 0.1 weak evidence or a trend, and p ≥ 0.1 indicating insufficient evidence[1].
Is AP value of 0.01 statistically significant?
Most authors refer to statistically significant as P < 0.05 and statistically highly significant as P < 0.001 (less than one in a thousand chance of being wrong). The significance level (alpha) is the probability of type I error.
Do you reject or fail to reject the null hypothesis?
After you perform a hypothesis test, there are only two possible outcomes. When your p-value is less than or equal to your significance level, you reject the null hypothesis. When your p-value is greater than your significance level, you fail to reject the null hypothesis.
What happens if the null hypothesis is not rejected?
If the null hypothesis is rejected at the 0.01 significance level, it will always be rejected at the 0.05 significance level. Equivalently, if the null hypothesis is not rejected at the 0.05 significance level, it cannot be rejected at the 0.05 significance level. If it is not rejected at 0.01, it still could be rejected at 0.05.
What is the significance level of a hypothesis?
Think of the significance level as an inverse measure of how much evidence you need before you can reject the null hypothesis. The smaller the significance level, the more evidence you need. Specifically, a significance level of 0.01 requires more evidence to reject the null hypothesis than a 0.05 significance level.
Is it necessary to test a hypothesis if 95\% sure?
As you are already 99\% sure that results are certain, there is no purpose of testing if you 95\% (5\% level of significance) sure or not. Thus, If you have a higher level of support for rejecting the null, there is no need to test the hypothesis for lower support or a higher level of significance.
What is the critical value when the level of significance decreases?
The critical value when the level of significance is 2.326. Recall that as the level of significance decreases the value of the critical value increase because it requires a higher deviation of the sample mean from the null hypothesis to reject the null hypothesis. Looking at the possible decisions for our two levels of significance