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13: Correlation

  • Page ID
    42072
    • Linda R. Cote, Rupa G. Gordon, Chrislyn E. Randell, Judy Schmitt, and Helena Marvin
    • University of Missouri System

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    A common theme throughout statistics is the notion that individuals will differ on different characteristics and traits, which we call variance. In inferential statistics and hypothesis testing, our goal is to find systematic reasons for differences and rule out random chance as the cause. By doing this, we are using information on a different variable, which so far has been group membership, like in ANOVA, to explain this variance. In correlations, we will instead use a continuous variable to account for the variance.

    • 13.1: Associations Among Variables
      This page discusses the shift from mean differences to correlations in analyzing relationships between two continuous variables. It covers covariance and correlation, including their calculations and significance. Visualizing data with scatter plots is emphasized to identify positive, negative, or nonexistent relationships, with examples related to job satisfaction and performance.
    • 13.2: Pearson's r
      This page discusses Pearson’s r, a correlation coefficient for analyzing linear relationships, detailing hypothesis testing, statistical significance, and the calculation of standard deviation and covariance. It provides an example of a study on anxiety and depression, highlighting a strong positive correlation (r = 0.70) and the importance of scatter plots. The relationship is statistically significant (p < .
    • 13.3: Correlation Considerations
      This page explores the complexities of correlation versus causation, emphasizing the need for careful analysis to avoid misconceptions due to lurking variables, outliers, or range restriction. It discusses the role of regression analysis and the utility of correlation matrices for efficiently presenting relationships between multiple continuous variables, while noting that different correlation coefficients can apply depending on data types, enhancing overall data interpretation in research.


    This page titled 13: Correlation is shared under a CC BY-NC-SA 4.0 license and was authored, remixed, and/or curated by Linda R. Cote, Rupa G. Gordon, Chrislyn E. Randell, Judy Schmitt, and Helena Marvin via source content that was edited to the style and standards of the LibreTexts platform.