碩士[[abstract]]當測量誤差(measurement error)和混和效用(mixed effect)同時出現在模型上,文獻上並無太多討論,主因是隨機效用積分後之邊際分配不再是廣義線性模型。本文探討log-linear及logistic模型中有測量誤差及混和效用時之估計方法,在log-linear模型討論常用的測量誤差校正方法包括naive、RC(regression calibration)、SIMEX(simulation extrapolation)、SMEA(small measurement error approximation)外,提出加權校正分數函數,並在重複觀測情況下使用加權、校正再加權之估計方法。而logistic模型除了使用積分取得邊際分配來估計外,利用動差建構估計方程式來估計,在重複觀測下使用部分校正來與未校正作比較。最後用電腦模擬本文所提之估計方法。[[abstract]]When the measurement error and mixed effect appear in the model at the same time, we can not find much discussion on the literature. The main reason is that the marginal distribution of the integral to the random effect is no longer a generalized linear model. This paper discussed the estimated method between measurement error and mixed ...
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
The linear mixed model has been a major research interest of Dr Arthur Gilmour, motivated by problem...
Linear mixed models (LMM) and the best linear unbiased predictor (BLUP) have received considerable a...
計畫編號:NSC97-2118-M032-012-MY2研究期間:200908~201007研究經費:680,000[[abstract]]對於分析長期追蹤資料或族群資料時,某些應變數之間並非是獨立分...
碩士[[abstract]]在過去文獻中很少討論在廣義線性模式中同時有測量誤差和隨機效用,主要是因為將隨機效用積分後的分配已不是廣義線性模式,使得傳統上的條件分數法或是校正分數法難以應用。本文主要探討...
碩士[[abstract]]本文探討當邏輯斯模型的自變數有測量誤差時,各種不同的估計方法表現的模擬研究。這些方法包含了傳統的迴歸校正、條件分數及新穎的延伸校正分數函數等等。我們考慮有不同的自變數分佈、...
Thesis (Ph. D.)--University of Washington, 2002The use of generalized linear mixed models is growing...
Thesis (Ph. D.)--University of Washington, 2002The use of generalized linear mixed models is growing...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
When (meta-)analyzing single-case experimental design (SCED) studies by means of hierarchical or mul...
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
The linear mixed model has been a major research interest of Dr Arthur Gilmour, motivated by problem...
Linear mixed models (LMM) and the best linear unbiased predictor (BLUP) have received considerable a...
計畫編號:NSC97-2118-M032-012-MY2研究期間:200908~201007研究經費:680,000[[abstract]]對於分析長期追蹤資料或族群資料時,某些應變數之間並非是獨立分...
碩士[[abstract]]在過去文獻中很少討論在廣義線性模式中同時有測量誤差和隨機效用,主要是因為將隨機效用積分後的分配已不是廣義線性模式,使得傳統上的條件分數法或是校正分數法難以應用。本文主要探討...
碩士[[abstract]]本文探討當邏輯斯模型的自變數有測量誤差時,各種不同的估計方法表現的模擬研究。這些方法包含了傳統的迴歸校正、條件分數及新穎的延伸校正分數函數等等。我們考慮有不同的自變數分佈、...
Thesis (Ph. D.)--University of Washington, 2002The use of generalized linear mixed models is growing...
Thesis (Ph. D.)--University of Washington, 2002The use of generalized linear mixed models is growing...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
In small samples it is well known that the standard methods for estimating variance components in a ...
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
When (meta-)analyzing single-case experimental design (SCED) studies by means of hierarchical or mul...
In this work, we consider parameter estimation methods for gene\-ralized linear mixed models (GL2M)....
The linear mixed model has been a major research interest of Dr Arthur Gilmour, motivated by problem...
Linear mixed models (LMM) and the best linear unbiased predictor (BLUP) have received considerable a...