 
        
Principal Components Regression: Recap of Part 2
Recall that the least squares solution  to the multiple linear problem  is given by(1) $latex \hat{\beta} = (X^T X)^{-1} X^T y $
And that problems occurred finding  when the matrix(2) 
was close to being singular. The Principal Components Regression approach to addressing the problem is to replace  in equation (1) with a better conditioned...					
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