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Measures of Association Deepak Khazanchi Chapter 18
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Bivariate Correlation vs. Nonparametric Measures of Association Parametric correlation requires two continuous variables measured on an interval or ratio scale The coefficient does not distinguish between independent and dependent variables
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Bivariate Correlation Analysis Pearson correlation coefficient r symbolized the coefficient's estimate of linear association based on sampling data Correlation coefficients reveal the magnitude and direction of relationships Coefficient’s sign (+ or -) signifies the direction of the relationship Assumptions of r Linearity Bivariate normal distribution
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Bivariate Correlation Analysis Scatterplots Provide a means for visual inspection of data the direction of a relationship the shape of a relationship the magnitude of a relationship (with practice)
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Interpretation of Coefficients Relationship does not imply causation Statistical significance does not imply a relationship is practically meaningful
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Interpretation of Coefficients Suggests alternate explanations for correlation results X causes Y... or Y causes X... or X & Y are activated by one or more other variables... or X & Y influence each other reciprocally
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Interpretation of Coefficients Artifact Correlations Goodness of fit F test Coefficient of determination Correlation matrix used to display coefficients for more than two variables
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Bivariate Linear Regression Used to make simple and multiple predictions Regression coefficients Slope Intercept Error term Method of least squares
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Interpreting Linear Regression Residuals what remains after the line is fit or (Yi-Yi) Prediction and confidence bands ^
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Interpreting Linear Regression Goodness of fit Zero slope Y completely unrelated to X and no systematic pattern is evident constant values of Y for every value of X data are related, but represented by a nonlinear function
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Nonparametric Measures of Association Measures for nominal data When there is no relationship at all, coefficient is 0 When there is complete dependency, the coefficient displays unity or 1
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Characteristics of Ordinal Data Concordant- subject who ranks higher on one variable also ranks higher on the other variable Discordant- subject who ranks higher on one variable ranks lower on the other variable
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Measures for Ordinal Data No assumption of bivariate normal distribution Most based on concordant/discordant pairs Values range from +1.0 to -1.0
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Measures for Ordinal Data Tests Gamma Somer’s d Spearman’s rho Kendall’s tau b Kendall’s tau c
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