Estimation of variance components and diagnostic analysis in unbalanced mixed linear models /

Bibliographic Details
Main Author: Gomez Meza, Marco Vinicio, 1954-
Other Authors: Dahm, Paul F. (degree committee member.), Garcia-Diaz, Alberto (degree committee member.), Gates, Charles E. (degree committee member.)
Format: Thesis Book
Language:English
Published: 1993.
Subjects:
Online Access:ProQuest, Abstract
Link to OAKTrust copy
Description
Abstract:This dissertation presents a new estimation procedure for the variance components in the unbalanced mixed linear model. Without the non-negativity constraint, restricted maximum likelihood (REML) estimates are computed applying the Expectation-Maximization (EM) algorithm. The approach used is to consider the unbalanced data as "incomplete data" and the conceptual set of n replications of each factor combination as the "complete data". An updated vector of "inputed values" is used at each iteration. This produces the generalized average (GAVE) method, which is a natural extension of the AVE method used for balanced data. The GAVE procedure takes into account the problem of empty cells while keeping the diagnostic properties of the AVE method. Numerical examples are included, which show the close relationship between AVE and GAVE algorithms, clarify these methodologies, and illustrate graphical diagnostic analysis.
Item Description:Vita.
"Major subject: Statistics."
Physical Description:xiv, 178 leaves : illustrations ; 28 cm
Bibliography:Includes bibliographical references.