6.3 Polynomial regression
One way to fit curves using a linear regression model is by building a polynomial, like this:
We call m the degree of the polynomial.
There are two important things to notice. First, polynomial regression is still linear regression; the linearity refers to the coefficients (the βs), not the variables (the xs). The second thing to note is that we are creating new variables out of thin air. The only observed variable is x
, the rest are just powers of x
. Creating new variables from observed ones is a perfectly valid ”trick” when doing regression; sometimes the transformation can be motivated or justified by theory (like taking the square root of the length of babies), but sometimes it is just a way to fit a curve. The intuition with polynomials is that for a given value of x
, the higher the degree of the polynomial, the more flexible the curve can be. A polynomial of degree 1 is a line, a polynomial of degree 2 is a curve that can go up or...