In this paper we consider some iterative estimation algorithms, which are valid to analyse the variance of data, which may be either non-grouped or grouped with different classification intervals. This situation appears, for instance, when data is collected from different sources and the grouping intervals differ from one source to another. The analysis of variance is carried out by means of general linear models, whose error terms may be general. An initial procedure in the line of the EM, although it does not necessarily agree with it, opens the paper and gives rise to a simplified version where we avoid the double iteration, which implicitly appears in the EM and, also, in the initial procedure mentioned above. The asymptotic stochastic ...
The problem of variance estimation is discussed in the light of the list sequential scheme proposed ...
The present study employed Monte Carlo procedures to investigate the effects of data categorization ...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
This thesis is directed toward data analysis and analysis of variance for data in a classificatory s...
The one-way analysis of variance (ANOVA) is mainly based on several assumptions and can be used to c...
ABSTRACT. We present an iterative estimation procedure to estimate panel data models when some obser...
Attention is restricted to a method called Analysis of variance (ANOVA) that is used to compare expe...
Vita.The problem of estimating variance components in the random and mixed linear models has no sati...
In components of variance models the data are viewed as arising through a sum of two random variable...
This thesis describes and compares some of commonly used methods of variance estimation of various s...
1. Factorial analysis of variance (anova) with unbalanced (non-orthogonal) data is a commonplace but...
It is obvious that the treatment of missing data has been an issue in statistics for some time now, ...
We consider one-way analysis of variance (ANOVA) model when the error terms have skew- normal distri...
Several features of sample surveys generally render inapplicable the st and ard explicit forms of va...
There is considerable amount of literature dealing with inference about the parameters in a heterosc...
The problem of variance estimation is discussed in the light of the list sequential scheme proposed ...
The present study employed Monte Carlo procedures to investigate the effects of data categorization ...
The mean prediction error of a classification or regression procedure can be estimated using resampl...
This thesis is directed toward data analysis and analysis of variance for data in a classificatory s...
The one-way analysis of variance (ANOVA) is mainly based on several assumptions and can be used to c...
ABSTRACT. We present an iterative estimation procedure to estimate panel data models when some obser...
Attention is restricted to a method called Analysis of variance (ANOVA) that is used to compare expe...
Vita.The problem of estimating variance components in the random and mixed linear models has no sati...
In components of variance models the data are viewed as arising through a sum of two random variable...
This thesis describes and compares some of commonly used methods of variance estimation of various s...
1. Factorial analysis of variance (anova) with unbalanced (non-orthogonal) data is a commonplace but...
It is obvious that the treatment of missing data has been an issue in statistics for some time now, ...
We consider one-way analysis of variance (ANOVA) model when the error terms have skew- normal distri...
Several features of sample surveys generally render inapplicable the st and ard explicit forms of va...
There is considerable amount of literature dealing with inference about the parameters in a heterosc...
The problem of variance estimation is discussed in the light of the list sequential scheme proposed ...
The present study employed Monte Carlo procedures to investigate the effects of data categorization ...
The mean prediction error of a classification or regression procedure can be estimated using resampl...