Multilevel model analysis using R

Journal Title: Revista Romana de Statistica - Year 2014, Vol 62, Issue 2

Abstract

The complex datasets cannot be analyzed using only simple regressions. Multilevel models (also known as hierarchical linear models, nested models, mixed models, random coefficient, random-effects models, random parameter models or split-plot designs) are statistical models of parameters that vary at more than one level. Multilevel models can be used on data with many levels, although 2-level models are the most common. Multilevel models, or mixed effects models, can be estimated in R. There are several packages available in CRAN. In this paper we are presenting some common methods to analyze these models.

Authors and Affiliations

Nicolae-Marius Jula

Keywords

Related Articles

O evaluare a productivităţii totale factoriale

Performanţele Modelului de dezvoltare est-asiatic au suscitat controverse în comunitatea academică, fiind atribuite statelor, pieţelor şi factorilor socioculturali. Articolul cuprinde o evaluare comparativă a ultimelor d...

School in Contemporary Society

Considered to be a key factor in the development of society, school provides qualified work force for all activity sectors, favors the progress, by stimulating intellectual curiosity, the capacity to adapt, the creativit...

Activitatea “Diseminarea Informaţiilor Statistice”, în contact direct cu utilizatorii de date şi informaţii statistice

Activitatea “Diseminarea Informaţiilor Statistice Româneşti” asigură un permanent contact între direcţiile din Institutul Naţional de Statistică şi utilizatorii de date şi informaţii statistice.

Growth with Endogenous Capital, Knowledge, and Renewable Resources

This paper proposes a dynamic economic model with endogenous technological change, physical capital and renewable resources. The model is a synthesis of the neoclassical growth theory, Arrow’s learning by doing, and some...

Statistical Evaluation of the Emissions Level Of CO, CO2 and HC Generated by Passenger Cars

This paper aims to make an evaluation of differences emission level of CO, CO2 and HC generated by passenger cars in different walking regimes and times, to identify measures of reducing pollution. Was analyzed a sample...

Download PDF file
  • EP ID EP121633
  • DOI -
  • Views 122
  • Downloads 0

How To Cite

Nicolae-Marius Jula (2014). Multilevel model analysis using R. Revista Romana de Statistica, 62(2), 55-66. https://europub.co.uk/articles/-A-121633