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Regression analysis / Magic / Magic square / Matrices / Symmetry / Coefficient of determination / Matrix / Multimagic square / Pandiagonal magic square / Mathematics / Statistics / Least squares
Date: 2009-12-28 19:51:19
Regression analysis
Magic
Magic square
Matrices
Symmetry
Coefficient of determination
Matrix
Multimagic square
Pandiagonal magic square
Mathematics
Statistics
Least squares

Did D¨urer Intentionally Show Only His Second-Best Magic Square? William H. Press The University of Texas at Austin December 25, 2009

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