McNemar's Test is a nonparametric statistical test used to determine if there is a significant difference in proportions between two related groups when the outcome is binary (e.g., yes/no, success/failure). It is beneficial when we have paired data, such as pre-test/post-test designs, where the same subjects are measured under two different conditions. The test is named after the statistician Quinn McNemar, who introduced it in 1947. It is commonly used in situations where subjects are measured before and after a treatment or in matched-pair study designs.
Assumptions of McNemar's Test
For McNemar's test to produce valid results, the following assumptions must be met:
Applicability and Conditions
McNemar's test is particularly suited for the following situations:
McNemar's test is a valuable tool for analyzing paired nominal data, particularly in medical and psychological research, where pre-post designs and matched-pair studies are commonly used. By understanding and meeting the assumptions of the test, researchers can apply McNemar's test to draw reliable conclusions about differences in proportions between two related groups.
来自章节 13:
Now Playing
Nonparametric Statistics
67 Views
Nonparametric Statistics
542 Views
Nonparametric Statistics
198 Views
Nonparametric Statistics
565 Views
Nonparametric Statistics
55 Views
Nonparametric Statistics
43 Views
Nonparametric Statistics
53 Views
Nonparametric Statistics
54 Views
Nonparametric Statistics
55 Views
Nonparametric Statistics
99 Views
Nonparametric Statistics
489 Views
Nonparametric Statistics
549 Views
Nonparametric Statistics
533 Views
Nonparametric Statistics
497 Views
Nonparametric Statistics
459 Views
See More
版权所属 © 2025 MyJoVE 公司版权所有,本公司不涉及任何医疗业务和医疗服务。