Parameter Calculation by Least Squares Minimization
The
method of least squares consists of minimizing
with respect to
β. Setting
θ = X
β, we minimize:
subject to:
Let
be the least squares estimate of
β. The fitted regression
is denoted by:
The elements of
are called the
residuals. The value of:
is called the
residual sum of squares. The matrix:
which is the regression matrix without the first column of 1s, is called the predictor data matrix.