In hypothesis testing, what does it mean to "accept the null hypothesis"?

Get more with Examzify Plus

Remove ads, unlock favorites, save progress, and access premium tools across devices.

FavoritesSave progressAd-free
From $9.99Learn more

Study for the Peregrine MBA Exam. Test your knowledge with flashcards and multiple choice questions, each with explanations. Get ready for your MBA exam!

Accepting the null hypothesis means concluding that there is no significant effect or difference that has been detected based on the data collected. In hypothesis testing, the null hypothesis typically represents the idea that there is no effect or relationship in the population being studied. When researchers accept the null hypothesis, they determine that the evidence from their sample data does not provide sufficient grounds to favor the alternative hypothesis, which would suggest that a significant effect exists.

In this context, concluding that there is no significant effect directly aligns with the process of hypothesis testing, where the goal is often to ascertain whether there is enough statistical evidence to reject the null hypothesis in favor of an alternative proposition. This approach is essential in scientific research and statistical analysis, where making assertions about a population involves testing whether observed patterns could have emerged by random chance alone.

Other options, while related to the process, do not capture the essence of accepting the null hypothesis. For instance, finding evidence against the null hypothesis goes against the concept of acceptance, while rejecting the alternative hypothesis is misleading because it doesn't clarify the stance on the null hypothesis directly. Verifying the assumption of the study is also relevant but reflects the foundational aspects of the research rather than the outcome of hypothesis testing itself. Thus, the choice to conclude there is

Subscribe

Get the latest from Examzify

You can unsubscribe at any time. Read our privacy policy