The process of hypothesis testing based on the P-value method includes calculating the P- value using the sample data and interpreting it.
First, a specific claim about the population parameter is proposed. The claim is based on the research question and is stated in a simple form. Further, an opposing statement to the claim is also stated. These statements can act as null and alternative hypotheses: a null hypothesis would be a neutral statement while the alternative hypothesis can have a direction. The alternative hypothesis can also be the original claim if it involves a specific direction about the population parameter.
Once the hypotheses are stated, they are expressed symbolically. As a convention, the null hypothesis would contain the equality symbol, while the alternative hypothesis may contain >, <, or ≠ symbols.
Before going further in the hypothesis testing, an appropriate significance level must be decided. There is a general consensus to set significance levels at 95% (i.e., 0.95) or 99% (i.e., 0.99) level. Here the α would be 0.05 or 0.01, respectively.
Next, identify an appropriate test statistic. The proportion and the mean (when population standard deviation is known) is the z statistic. For the mean, when the population standard deviation is unknown, it is a t statistic, and for the variance (or SD), it is a chi-square statistic.
After calculating the test statistic, find the P-value electronically or from the respective P-value table, and compare it with the pre-decided significance level. If the P-value is less than the pre-decided significance level, reject the null hypothesis.
The interpretation of the original claim from the hypothesis or the property of the population must be based on the P-value.