Resumo de comunicação oral em póster apresentado em COMPSTAT2008 - 18th International Conference on Computational Statistics, Porto, Portugal, 24 a 29 de Agosto 2008The idea of combining models in Discrete Discriminant Analysis (DDA) is present in a growing number of papers which aim to obtain more robust and more stable models than any of the competing ones. This seems to be a promising approach since it is known that different DDA models perform differently on different subjects (Brito et al.(2006)). In particular, this will be a more relevant issue if the groups are not well separated, which often occurs in practice. In the present work a new methodological approach is suggested which is based on DDA models' combination. The multiclass ...
Multivariate Analysis (MVA) is based on the Statistical principle of Multivariate Statistics which i...
In systems that combine the outputs of classification methods (combination systems), such as ensembl...
Among the various discriminant analysis (DA) methods, researchers have investigated several directio...
Resumo da comunicação em póster apresentada em International Conference on Trends and Perspectives i...
Abstract. The idea of combining models in Discrete Discriminant Analysis (DDA) is present in a growi...
Trabalho apresentado em SMTDA 2010: Stochastic Modeling Techniques and Data Analysis International C...
Resumo da comunicação oral apresentada em XVIII Jornadas de Classificação e Análise de Dados (JOCLAD...
Abstract: In the context of Discrete Discriminant Analysis (DDA) the idea of combining models is pre...
Resumo de comunicação oral apresentada em 11th Conference of the International Federation of Classif...
Diverse Discrete Discriminant Analysis (DDA) models perform differently in different samples. This f...
Resumo de comunicação em póster apresentada em 14th International Conference on Applied Stochastic M...
In Discrete Discriminant Analysis one often has to deal with dimensionality problems. In fact, even ...
Abstract. In discrete discriminant analysis dimensionality problems occur, particularly when dealing...
The best classification rule is the one that leads to the smallest probability of misclassification ...
The statistical literature contains a wide variety of reports on procedures for discriminant analysi...
Multivariate Analysis (MVA) is based on the Statistical principle of Multivariate Statistics which i...
In systems that combine the outputs of classification methods (combination systems), such as ensembl...
Among the various discriminant analysis (DA) methods, researchers have investigated several directio...
Resumo da comunicação em póster apresentada em International Conference on Trends and Perspectives i...
Abstract. The idea of combining models in Discrete Discriminant Analysis (DDA) is present in a growi...
Trabalho apresentado em SMTDA 2010: Stochastic Modeling Techniques and Data Analysis International C...
Resumo da comunicação oral apresentada em XVIII Jornadas de Classificação e Análise de Dados (JOCLAD...
Abstract: In the context of Discrete Discriminant Analysis (DDA) the idea of combining models is pre...
Resumo de comunicação oral apresentada em 11th Conference of the International Federation of Classif...
Diverse Discrete Discriminant Analysis (DDA) models perform differently in different samples. This f...
Resumo de comunicação em póster apresentada em 14th International Conference on Applied Stochastic M...
In Discrete Discriminant Analysis one often has to deal with dimensionality problems. In fact, even ...
Abstract. In discrete discriminant analysis dimensionality problems occur, particularly when dealing...
The best classification rule is the one that leads to the smallest probability of misclassification ...
The statistical literature contains a wide variety of reports on procedures for discriminant analysi...
Multivariate Analysis (MVA) is based on the Statistical principle of Multivariate Statistics which i...
In systems that combine the outputs of classification methods (combination systems), such as ensembl...
Among the various discriminant analysis (DA) methods, researchers have investigated several directio...