Nathaniel E. Helwig
Xn i=1 (yi y )2 = y0[In (1=n)J]y SSR = Xn i=1 (y^ i y )2 = y0[H (1=n)J]y SSE = Xn i=1 (yi ^yi) 2 = y0[In H]y Note: J is an n n matrix of ones Nathaniel E. Helwig (U of Minnesota) Multivariate Linear Regression Updated 16-Jan-2017 : Slide 16
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