Foundations of Multiple Regression and Analysis of Variance

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A01=Lynn Roy LaMotte
advanced linear models for researchers
ANOVA effects
Author_Lynn Roy LaMotte
categorical data modeling
Category=KCH
Category=PBT
Dummy variables
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Estimability
Exclusive tests of effects
graduate level statistics
Gram-Schmidt construction
hypothesis testing techniques
Inverse prediction
Least squares by orthogonal projection
linear statistical inference
matrix algebra applications
Noncentrality parameter
Numerator sums of squares
Resolution for unbalanced ANOVA models
statistical computing methods
Type III methods

Product details

  • ISBN 9781032981529
  • Weight: 660g
  • Dimensions: 156 x 234mm
  • Publication Date: 24 Sep 2025
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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This book provides a rigorous development of the foundations of linear models for multiple regression and Analysis of Variance (ANOVA), based on orthogonal projections and relations among linear subspaces. It is appropriate for the linear models course required in most statistics Ph.D. programs.

The presentation is particularly accessible because it is self-contained, general, and taken in logical steps that are linked directly to practicable computations. The broad objective is to provide a path of mastery so that the reader could, if stranded on a desert isle with nothing but pencil, paper, and a computer to perform matrix sums and products, replicate general linear models procedures in extant statistical computing packages.

The primary prerequisite is mathematical maturity, which includes logical thinking and the ability to tell when a proof is a proof. Casual acquaintance with matrices would be helpful but not required. Background in basic statis- tical theory and methods is assumed, mainly for familiarity with terminology and the purposes of statistics in applications.

The material is developed as a series of propositions, each dependent only on those preceding it. The reader is strongly encouraged to prove each one independently. Mastery requires active involvement.

As part of the broad coverage of the mathematics supporting multiple regression and ANOVA, those propositions also establish several new, key results.

  • There is a unique, best numerator sum of squares for testing an estimable function
  • The extra residual sum of squares due to imposing a linear hypothesis tests exclusively the estimable part
  • Models that include exclusively any given set of ANOVA effects can be formulated with contrast coding
  • Tests of any ANOVA effects in any design and model, including unbalanced and empty cells, can be had with extra residual sum of squares due to deleting predictor variables
  • Essential properties of Type III methods are identified and proven

Lynn Roy LaMotte is Professor Emeritus in the Biostatistics Program, School of Public Health, LSU Health–New Orleans. Elected Fellow of the American Statistical Association, 1985, for “important, innovative, seminal, and diverse contributions to the theory and application of linear statistical models,” he is author of about 100 articles in diverse academic journals, cited more than 2,000 times, nearly 500 since 2020.

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