Disciplina - detalhe

LCE5872 - Estatística Experimental II e Modelos Mistos


Carga Horária

Teórica
por semana
Prática
por semana
Créditos
Duração
Total
3
1
8
15 semanas
120 horas

Docentes responsáveis
Clarice Garcia Borges Demetrio
Renata Alcarde Sermarini
Sônia Maria De Stefano Piedade
Taciana Villela Savian

Objetivo
Fornecer ao aluno uma base sólida metodológica para a análise de dados contínuos em pesquisa
experimental, incluindo o uso de diagramas de Hasse e modelos mitosos para dados incompletos.

Conteúdo
Ementa:
Definição e formulação de modelos envolvendo conceitos de álgebra matricial e inferência estatística
para a análise de dados contínuos, usando diagramas de Hasse, dando ênfase a modelos lineares para
dados incompletos, usando a teoria de modelos mistos, incluindo as técnicas de estimação, de
verificação de ajuste dos modelos e de diagnósticos. Todos os métodos e aplicações usarão o software
R.
Conteúdo:
1. Diagramas de Hasse.
2. Introdução aos modelos mistos.
3. Classificações cruzadas desbalanceadas.
4. Experimentos em parcelas subdivididas .
5. Experimentos em faixas.
6. Blocos Incompletos balanceados.
7. Reticulados Quadrados.
8. Análise conjunta de grupos de Experimentos.
9. Análise conjunta de grupos de experimentos com tratamentos comuns (Blocos aumentados).

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