Multivariate linear models and repeated measurements revisited

Peter Dalgaard

Abstract

Methods for generalized analysis of variance based on multivariate normal theory have been known for many years. In a repeated measurements context, it is most often of interest to consider transformed responses, typically within-subject contrasts or averages. Efficiency considerations leads to sphericity assumptions, use of F tests and the Greenhouse-Geisser and Huynh-Feldt adjustments to compensate for deviations from sphericity. During a recent implementation of such methods in the R language, the general structure of such transformations was reconsidered, leading to a flexible specification method involving differences between orthogonal projections onto subspaces generated by within-subject models.
Original languageEnglish
Title of host publicationBulletin of the International Statistical Institute
EditorsIvette Gomes, Pedro Luis do Nascimento Silva, Jose Alberto Silva
Number of pages4
Publication date2009
Pages3649-3652
Publication statusPublished - 2009
Event56th Session of the ISI International Statistical Institute - Lissabon, Portugal
Duration: 22 Aug 200729 Aug 2007
Conference number: 56

Conference

Conference56th Session of the ISI International Statistical Institute
Number56
Country/TerritoryPortugal
CityLissabon
Period22/08/200729/08/2007

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