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12: Factorial and Repeated Measures ANOVA

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    54193
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    • 12.1: Beyond One-Way ANOVA
      This page covers advanced types of ANOVA beyond one-way ANOVA, including factorial ANOVA for multiple grouping variables and Repeated Measures ANOVA for assessing changes over time. It highlights the potential for mixed designs that combine different ANOVAs to address specific research questions, emphasizing that the discussion is just an introduction to a wider topic.
    • 12.2: Factorial Designs
      This page covers two-way ANOVA in factorial analysis, focusing on the exploration of multiple independent variables and their interactions. It emphasizes data variability separation, examples of experimental designs, and the importance of Sums of Squares and marginal means.
    • 12.3: Interpreting Main and Interaction Effects
      This page covers interaction effects in factorial analyses, detailing how to detect and interpret them alongside main effects. It outlines three scenarios in data analysis: significant main effects without interaction, significant interaction without main effects, and both present. Main effects show independent factors affecting variability, while interactions indicate combined influences.
    • 12.4: Repeated-Measures ANOVA
      This page discusses repeated-measures ANOVA, which compares means of a single group across different testing conditions to assess variability over time. Unlike independent-groups ANOVA, it uses the same participants, reducing confounding variables related to pre-existing differences. However, it may introduce learning effects. Understanding different research designs is crucial for effective data analysis and drawing causal conclusions.
    • 12.5: Variables and Hypotheses in Repeated-Measures ANOVA
      This page discusses repeated-measures ANOVA, which examines data with one qualitative treatment variable and one quantitative dependent variable under various conditions. Key assumptions include multiple measurements on the same participants, normal distribution, and sphericity. It covers hypothesis types, omnibus tests for overall mean differences, and post-hoc tests for specific comparisons.


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