scholarly journals Analysis of Youden Square Design with Two Missing Observations Belonging To the Same Treatment

Author(s):  
Dr. Shiv Kumar ◽  

Two missing observations can occur in a Youden Square Design in eight mutually exclusive ways. In the present study, the author has tried to discuss the case of two missing observations belonging to the same treatment. Estimates of the missing observations and variances of the various elementary treatment contrasts have been obtained by using Bartlett’s covariate analysis.

Author(s):  
Roman Flury ◽  
Reinhard Furrer

AbstractWe discuss the experiences and results of the AppStatUZH team’s participation in the comprehensive and unbiased comparison of different spatial approximations conducted in the Competition for Spatial Statistics for Large Datasets. In each of the different sub-competitions, we estimated parameters of the covariance model based on a likelihood function and predicted missing observations with simple kriging. We approximated the covariance model either with covariance tapering or a compactly supported Wendland covariance function.


1999 ◽  
Vol 88 (2) ◽  
pp. 341-363 ◽  
Author(s):  
Vı́ctor Gómez ◽  
Agustı́n Maravall ◽  
Daniel Peña

2013 ◽  
Vol 2013 ◽  
pp. 1-13 ◽  
Author(s):  
Helena Mouriño ◽  
Maria Isabel Barão

Missing-data problems are extremely common in practice. To achieve reliable inferential results, we need to take into account this feature of the data. Suppose that the univariate data set under analysis has missing observations. This paper examines the impact of selecting an auxiliary complete data set—whose underlying stochastic process is to some extent interdependent with the former—to improve the efficiency of the estimators for the relevant parameters of the model. The Vector AutoRegressive (VAR) Model has revealed to be an extremely useful tool in capturing the dynamics of bivariate time series. We propose maximum likelihood estimators for the parameters of the VAR(1) Model based on monotone missing data pattern. Estimators’ precision is also derived. Afterwards, we compare the bivariate modelling scheme with its univariate counterpart. More precisely, the univariate data set with missing observations will be modelled by an AutoRegressive Moving Average (ARMA(2,1)) Model. We will also analyse the behaviour of the AutoRegressive Model of order one, AR(1), due to its practical importance. We focus on the mean value of the main stochastic process. By simulation studies, we conclude that the estimator based on the VAR(1) Model is preferable to those derived from the univariate context.


2005 ◽  
Vol 11 (3) ◽  
pp. 280-285 ◽  
Author(s):  
X Liang ◽  
N Schnetz-Boutaud ◽  
S J Kenealy ◽  
L Jiang ◽  
J Bartlett ◽  
...  

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