The power of MANOVA to detect an effect depends on:
Question 20 options:
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Answer
Power of MANOVA to detect an effect depends upon correlation, i.e. Correlation is directly proportional or related to the power of MANOVA test.
Correlation in MANOVA test is between two variables, which are dependent variable and effect size.
So, we can say that the power of MANOVA test to detect an effect is depends on the correlation between dependent variable and the effect size to be detected.
So, option A is correct answer.
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