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Kutner M.H., Nachtsheim C.J., Neter J., Li W. Applied Linear Statistical Models
McGraw-Hill, 2004. - 1424 pages.

This new edition of Applied Linear Statistical Models retains the book's uniquely straightforward writing style and format while providing you with the latest information and knowledge. Updates include developments and methods in partial regression and residual plots, an entirely new introduction to the "Design of Experiments" section that frames and outlines the organization and concepts of design and ANOVA, and more.
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