textabstractFor many least-squares decomposition models efficient algorithms are well known. A more difficult problem arises in decomposition models where each residual is weighted by a nonnegative value. A special case is principal components analysis with missing data. Kiers (1997) discusses an algorithm for minimizing weighted decomposition models by iterative majorization. In this paper, we for computing a solution. We will show that the algorithm by Kiers is a special case of our algorithm. Here, we will apply weighted majorization to weighted principal components analysis, robust Procrustes analysis, and logistic bi-additive models of which the two parameter logistic model in item response theory is a special case. Simulation studies ...
Multivariate binary data is becoming abundant in current biological research. Logistic principal com...
Sparse solutions to the linear inverse problem Ax = y and the determination of an environmentally ad...
A procedure is described for minimizing a class of matrix trace functions. The procedure is a refine...
For many least-squares decomposition models efficient algorithms are well known. A more difficult pr...
For a large variety of discrete choice models (or contingency table models) efficientand stable maxi...
Majorization algorithms generalize the EM algorithm. In this paper we discuss and compare various qu...
A new approach for fitting the exploratory factor analysis (EFA) model is considered. The EFA model ...
Abstract: It is commonly known that many techniques for data analysis based on the least squares cri...
So far, many ad hoc techniques have been proposed to compute maxium likelihood estimates for various...
Huber's criterion can be used for robust joint estimation of regression and scale parameters in the ...
The problem of minimizing a general matrix, trace function, possibly subject to certain constraints,...
Majorization algorithms generalize the EM algorithm. In this paper we discuss several distinct, alth...
International audienceIn a learning context, data distribution are usually unknown. Observation mode...
A novel algorithm is developed for the problem of finding a low-rank correlation matrix nearest to a...
Abstract. In this paper, the diagonal majorization algorithm (DMA) has been investigated. The resear...
Multivariate binary data is becoming abundant in current biological research. Logistic principal com...
Sparse solutions to the linear inverse problem Ax = y and the determination of an environmentally ad...
A procedure is described for minimizing a class of matrix trace functions. The procedure is a refine...
For many least-squares decomposition models efficient algorithms are well known. A more difficult pr...
For a large variety of discrete choice models (or contingency table models) efficientand stable maxi...
Majorization algorithms generalize the EM algorithm. In this paper we discuss and compare various qu...
A new approach for fitting the exploratory factor analysis (EFA) model is considered. The EFA model ...
Abstract: It is commonly known that many techniques for data analysis based on the least squares cri...
So far, many ad hoc techniques have been proposed to compute maxium likelihood estimates for various...
Huber's criterion can be used for robust joint estimation of regression and scale parameters in the ...
The problem of minimizing a general matrix, trace function, possibly subject to certain constraints,...
Majorization algorithms generalize the EM algorithm. In this paper we discuss several distinct, alth...
International audienceIn a learning context, data distribution are usually unknown. Observation mode...
A novel algorithm is developed for the problem of finding a low-rank correlation matrix nearest to a...
Abstract. In this paper, the diagonal majorization algorithm (DMA) has been investigated. The resear...
Multivariate binary data is becoming abundant in current biological research. Logistic principal com...
Sparse solutions to the linear inverse problem Ax = y and the determination of an environmentally ad...
A procedure is described for minimizing a class of matrix trace functions. The procedure is a refine...