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Repeated Measures ANOVAs

  • Welcome
    • About
    • Installing R(Studio)
  • R Basics
    • Types of Scripts
    • R Fundamentals
    • R Logic
  • Statistics Foundations
    • Statistics Basics
    • Scientific Notation
    • Probability (R)
  • Describing Data
    • Central Tendency (R, Python, Excel, JASP)
    • Dispersion (R,Python, Excel, JASP)
  • Distributions
    • Binomial Distribution (R)
    • Normal Distribution
    • Skewness (R,Python)
    • Transforming Data (R)
  • Correlation
    • Correlations (R,Python)
    • Partial Correlations (R,Python)
  • Regressions
    • Simple regression (R)
    • Multiple Regressions (R)
  • General Linear Models
    • General Linear Models and Sum of Squares (R, Python)
    • T-Tests (R, Python incomplete)
    • One Way ANOVA (incomplete)
    • Repeated Measures ANOVAs
    • Mixed ANOVA (incomplete)
    • ANCOVA (incomplete)
  • Categorical
    • Contingency (R)
  • Item analyses
    • Cronbach’s Alpha (R,Python)
  • Multiple testing
    • Family-Wise Error (R)
    • False Discovery Rate(R)
    • FWER, FDR, Positive and Negative effects(R)
  • Permutations
    • Permutations (R)
    • Permutation vs. t tests (incomplete)
  • Excel tutorial
    • Formulas
    • If function
    • Count and countifs function
    • Sum and SumIf
    • Averageifs
    • Anchoring
  • Test yourself
    • All questions
    • Question Maker

Repeated Measures ANOVAs

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