Chapter 7 • Modeling Relationships of Multiple Variables with Linear Regression 182 variables are left out. Only a large body of research would be able to account for enough factors that researchers could comfortably conclude causality.
Summary Multiple linear
regression has many advantages, as researchers can examine the multiple factors that contribute to social experiences and control for the influence of spurious effects. They also allow us to create refined graphs of relationships through regression lines. These can be a straightforward and accessible way of presenting results. Knowing how to interpret linear regression coefficients allows researchers to understand both the direction of a relationship (whether one variable is associated with an increase or a decrease in another variable) and strength (how much of a difference in the dependent variable is associated with a measured difference in the independent variable. Knowing about the F-test and R-square helps researchers understand the explanatory power of statistical models. As with other statistical measures, the significance tests in regressions address the concern of random variation and the degree to which it is a possible explanation for the observed relationships.
As regressions are complex, care is needed in performing them. Researchers need to examine the variables and construct them informs that are amenable to this approach, such as creating dummy variables. They also need to examine findings carefully and test for concerns such as collinearity or patterns among residuals. This being said, linear regressions are quite forgiving of minor breaches of these assumptions and can produce some of the most useful information on the relationships between variables.
Key Terms Adjusted R-Square B Coefficient
Collective effects Collinearity Constant Constant variance Control variables Degrees of freedom Dummy variables Explanatory power Intercept Linear relationship Normality of residuals
Outliers
Reference group Residuals R-square Slope Spurious factors
Unstandardized
coefficient Chapter 7 • Modeling Relationships of Multiple Variables with Linear Regression 183
Share with your friends: