The current methods available for the computation of the residual interaction in the Latin square (and higher order fractional designs) are rather ad hoc. The algorithms which exist to construct the residual interaction contrasts are complex and confusing. Additionally, it is difficult to generalize them to other types of fractional factorial designs. These contrasts may be developed with the Gram-Schmidt orthonormalization. Extensions of the approach are developed.
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