Statistical Methods for Multivariate Missing Data in Health Survey Research / 예방의학회지
Korean Journal of Preventive Medicine
;
: 875-884, 1998.
Artículo
en Coreano
| WPRIM
| ID: wpr-199622
ABSTRACT
Missing observations are common in medical research and health survey research. Several statistical methods to handle the missing data problem have been proposed. The EM algorithm (Expectation-Maximization algorithm) is one of the ways of efficiently handling the missing data problem based on sufficient statistics. In this paper, we developed statistical models and methods for survey data with multivariate missing observations. Especially, we adopted the Em algorithm to handle the multivariate missing observations. We assume that the multivariate observations follow a multivariate normal distribution, where the mean vector and the covariance matrix are primarily of interest. We applied the proposed statistical method to analyze data from a health survey. The data set we used came from a physician survey on Resource-Based Relative Value Scale(RBRVS). In addition to the EM algorithm, we applied the complete case analysis, which used only completely observed cases, and the available case analysis, which utilizes all available information. The residual and normal probability plots were evaluated to access the assumption of normality. We found that the residual sum of squares from the EM algorithm was smaller than those of the complete-case and the available-case analyses.
Texto completo:
Disponible
Índice:
WPRIM (Pacífico Occidental)
Asunto principal:
Escalas de Valor Relativo
/
Bioestadística
/
Encuestas Epidemiológicas
/
Modelos Estadísticos
/
Conjunto de Datos
Tipo de estudio:
Factores de riesgo
Idioma:
Coreano
Revista:
Korean Journal of Preventive Medicine
Año:
1998
Tipo del documento:
Artículo
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