How can you design a mixed factorial experiment to minimize disadvantages?

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Mixed factorial experiments are a common type of experimental design that combine between-subjects and within-subjects factors. They can help you test the effects of different treatments or conditions on different groups of participants, as well as how they change over time or across repeated measures. However, mixed factorial experiments also have some disadvantages, such as increased complexity, potential confounding, and ethical issues. In this article, you will learn how to design a mixed factorial experiment to minimize these disadvantages and maximize the validity and reliability of your results.

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