Respuesta :
Answer:
The answer is a) less than 5% of the time
Step-by-step explanation:
By definition, the level of significance is the probability that one rejects a null hypothesis of a test when it is true. Denoted as alpha α, it shows how convincing the sample data is and concludes if it is statistically significant.
A level of significaance of 5% or 0.05, shows that you need more convincing power before determining whether you willreject the null hypothesis
By way of rule,
-If p-value ≤ level of significance α , then reject the null hypothesis.
-If p-value ≥ level of significance α , then do not reject the null hypothesis.
This implies that a statistician with a 5% level of significance will reject the null hypothesis if her hypothesized value falls below this mark.
Answer:
c) 95% of the time or more.
Step-by-step explanation:
The level of significance in a statistical research is the probability of rejecting the null hypothesis when it is actually true. A possible example is a significance level of 0.02 which indicates a 2% risk of concluding that a difference exists when there is no actual difference. The lower the significance level, the stronger the evidence required before you can reject the null hypothesis. 5% significance level may imply 95% confidence interval which means the range of values that occurs 95% of the time.
Therefore, rejecting the null hypothesis at 5% significance level means that the alternative hypothesis differs from the null hypothesis by 95% or more of its possible values (95% of the time or more).