A one-tailed test is a statistical hypothesis test in which the critical region is located in only one tail of the probability distribution. It is used to determine if there is a significant difference in a specific direction between a sample statistic and a population parameter.
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In a one-tailed test, the researcher has a specific directional prediction about the relationship between the sample statistic and the population parameter.
The critical region for a one-tailed test is located in either the upper or lower tail of the probability distribution, depending on the direction of the alternative hypothesis.
One-tailed tests have more statistical power than two-tailed tests when the alternative hypothesis specifies a direction, as they only require the test statistic to fall in one tail of the distribution.
The choice between a one-tailed or two-tailed test depends on the research question and the directionality of the expected effect.
One-tailed tests are commonly used in fields such as medicine, psychology, and social sciences, where researchers have a specific directional hypothesis about the relationship between variables.
Review Questions
Explain the difference between a one-tailed and a two-tailed test in the context of hypothesis testing.
In a one-tailed test, the critical region is located in only one tail of the probability distribution, corresponding to a specific directional alternative hypothesis. In contrast, a two-tailed test has the critical region split between the two tails of the distribution, allowing for the detection of significant differences in either direction. The choice between a one-tailed or two-tailed test depends on the research question and whether the researcher has a specific directional prediction about the relationship between the sample statistic and the population parameter.
Describe the relationship between the null hypothesis and the alternative hypothesis in a one-tailed test.
In a one-tailed test, the null hypothesis (H₀) typically states that there is no significant difference or relationship between the sample statistic and the population parameter in a specific direction. The alternative hypothesis (H₁), on the other hand, specifies a directional prediction about this relationship. For example, the null hypothesis might be that there is no difference in test scores between two groups, while the alternative hypothesis could be that one group has significantly higher test scores than the other.
Analyze the statistical power and implications of using a one-tailed test compared to a two-tailed test.
One-tailed tests generally have more statistical power than two-tailed tests when the alternative hypothesis specifies a direction, as the critical region is located in only one tail of the probability distribution. This means that a one-tailed test requires a smaller effect size to detect a significant difference compared to a two-tailed test. However, the use of a one-tailed test should be justified by the research question and the directionality of the expected effect. Choosing an inappropriate one-tailed test can increase the risk of making a Type I error, as the critical region is only in one tail of the distribution.
Related terms
Null Hypothesis: The null hypothesis is a statement that there is no significant difference or relationship between the sample statistic and the population parameter being tested.
The alternative hypothesis is a statement that there is a significant difference or relationship between the sample statistic and the population parameter being tested, in a specific direction.
The critical region is the set of values of the test statistic that lead to the rejection of the null hypothesis, in a one-tailed test, it is located in only one tail of the probability distribution.