Neither fixed nor random: weighted least squares meta-regression


Autoria(s): Stanley, T.D.; Doucouliagos, Hristos
Data(s)

20/06/2016

Resumo

Our study revisits and challenges two core conventional meta-regression estimators: the prevalent use of‘mixed-effects’ or random-effects meta-regression analysis and the correction of standard errors that defines fixed-effects meta-regression analysis (FE-MRA). We show how and explain why an unrestricted weighted least squares MRA (WLS-MRA) estimator is superior to conventional random-effects (or mixed-effects) meta-regression when there is publication (or small-sample) bias that is as good as FE-MRA in all cases and better than fixed effects in most practical applications. Simulations and statistical theory show that WLS-MRA provides satisfactory estimates of meta-regression coefficients that are practically equivalent to mixed effects or random effects when there is no publication bias. When there is publication selection bias, WLS-MRA always has smaller bias than mixed effects or random effects. In practical applications, an unrestricted WLS meta-regression is likely to give practically equivalent or superior estimates to fixed-effects, random-effects, and mixed-effects meta-regression approaches. However, random-effects meta-regression remains viable and perhaps somewhat preferable if selection for statistical significance (publication bias) can be ruled out and when random, additive normal heterogeneity is known to directly affect the ‘true’ regression coefficient.

Identificador

http://hdl.handle.net/10536/DRO/DU:30088181

Idioma(s)

eng

Publicador

Wiley

Relação

http://dro.deakin.edu.au/eserv/DU:30088181/doucouliagos-neitherfixed-inpress-2016.pdf

http://www.dx.doi.org/10.1002/jrsm.1211

Direitos

2016, Wiley

Palavras-Chave #meta-regression #weighted least squares #random effects #fixed effect #meta-regression analysis
Tipo

Journal Article