Title of article :
A Non-Random Dropout Model for Analyzing Longitudinal Skew-Normal Response
Author/Authors :
Baghfalaki, T. shahid beheshti university - Department of Statistics, تهران, ايران , Ganjali, M. shahid beheshti university - Department of Statistics, تهران, ايران , Khounsiavash, M. islamic azad university, ايران
From page :
101
To page :
129
Abstract :
In this paper, multivariate skew-normal distribution is em- ployed for analyzing an outcome based dropout model for repeated mea- surements with non-random dropout in skew regression data sets. A probit regression is considered as the conditional probability of an ob- servation to be missing given outcomes. A simulation study of using the proposed methodology and comparing it with a semi-parametric method, GEE, is provided. The standardized bias is used for compari- son of different approaches. Furthermore, for investigation of efficiency of the methodology two applications are analyzed where observed infor- mation matrix is used to find the variances of the parameter estimates. In one of the applications a sensitivity analysis is also performed to in- vestigate the change on the response model’s parameter estimates due to perturbation of drop-out model’s parameter of interest
Keywords :
Dropout , generalized estimating equations (GEE) , longitu , dinal data , observed information matrix , selection model , Skew , Normal distribution
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Journal title :
Journal of the Iranian Statistical Society (JIRSS)
Record number :
2578588
Link To Document :
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