This thesis focuses on approximating misclassification errors of likelihood-based classifiers considering two cases. The first case assumes the allocation of a new observation into two normal populations. The second case classifies repeated measurements using the growth curve model, considering the fact that the new observation might not belong to any of the two predetermined populations but to an unknown population. In this thesis, likelihood-based approaches were used to derive classification rules used to allocate a new observation in any of the two predefined normally distributed populations. Moreover, a two-step likelihood-based classification of growth curves is studied from which the distribution of a new observation is either drawn...
grantor: University of TorontoRegularity conditions are presented and a rigorous proof is ...
Much effort has been devoted to deriving Edgeworth expansions for various classes of statistics that...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...
This thesis focuses on approximating misclassification errors of likelihood-based classifiers consid...
In this paper, probabilities of misclassification of a two-step likelihood-based discriminant rule a...
In this paper we consider discrimination between two populations of repeated measurements using grow...
In this paper we consider discrimination between two populations of repeated measurements using grow...
This thesis covers misclassification probabilities via an Edgeworth-type expansion of the maximum li...
The exact distribution of a classification function is often complicated to allow for easy numerical...
The exact distribution of a classification function is often complicated to allow for easy numerical...
In this paper, we propose approximations for the probabilities of misclassification in linear discri...
In this paper, we propose approximations for the probabilities of misclassification in linear discri...
The problem of classification into two exponential populations with a common location parameter unde...
In classification methods that explicitly model class-conditional probability distributions, the tru...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...
grantor: University of TorontoRegularity conditions are presented and a rigorous proof is ...
Much effort has been devoted to deriving Edgeworth expansions for various classes of statistics that...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...
This thesis focuses on approximating misclassification errors of likelihood-based classifiers consid...
In this paper, probabilities of misclassification of a two-step likelihood-based discriminant rule a...
In this paper we consider discrimination between two populations of repeated measurements using grow...
In this paper we consider discrimination between two populations of repeated measurements using grow...
This thesis covers misclassification probabilities via an Edgeworth-type expansion of the maximum li...
The exact distribution of a classification function is often complicated to allow for easy numerical...
The exact distribution of a classification function is often complicated to allow for easy numerical...
In this paper, we propose approximations for the probabilities of misclassification in linear discri...
In this paper, we propose approximations for the probabilities of misclassification in linear discri...
The problem of classification into two exponential populations with a common location parameter unde...
In classification methods that explicitly model class-conditional probability distributions, the tru...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...
grantor: University of TorontoRegularity conditions are presented and a rigorous proof is ...
Much effort has been devoted to deriving Edgeworth expansions for various classes of statistics that...
AbstractIn this paper an optimum procedure, based on the maximum-likehood criterion, for classificat...