I am very confused on the differences between linear and quadratic regression.
In linear regression, you have R, Pearson's correlation coefficient, which can tell you the strength and direction of a linear relationship, and R^2, the coefficient of determination, which can tell you how well the regression model fits the observed data, correct?
In quadratic regression, I believe it is slightly different. From my research, I have been unable to find out if R can be calculated for a quadratic model. If not, is there another kind of correlation coefficient that can describe the strength and direction of a quadratic relationship? I believe that in quadratic regression R^2 still acts as the coefficient of determination and can be used in the same fashion. Is this correct?