Principal Components Regression - NCSS
estimates is less than that for least squares. Mathematically, the estimation formula becomes A =(Z'Z)−1Z'Y =D−1Z'Y because of the special nature of principal components. Notice that this is ordinary least squares regression applied to a different set of independent variables.
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