In many research domains different pieces of information are collected regarding the same set of objects. Each piece of information constitutes a data block, and all these (coupled) blocks have the object mode in common. When analyzing such data, an important aim is to obtain an overall picture of the structure underlying the whole set of coupled data blocks. A further challenge consists of accounting for the differences in information value that exist between and within (i.e., between the objects of a single block) data blocks. To tackle these issues, analysis techniques may be useful in which all available pieces of information are integrated and in which at the same time noise heterogeneity is taken into account. For the case of binary c...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
In this paper, we investigate the hypothesis that people use feature correlations to detect inter- a...
In many research domains different pieces of information are collected regarding the same set of obj...
In many areas of the behavioral sciences, different groups of objects are measured on the same set o...
Abstract In many areas of the behavioral sciences, different groups of objects are measured on the s...
In many areas of science, research questions imply the analysis of a set of coupled data blocks, wit...
In many fields of research problems often result in the collection of coupled data, which consist of...
Research questions in several research domains imply the simultaneous analysis of different blocks o...
Hierarchical classes (HICLAS) models for multi-way multi-mode data constitute a unique family of cla...
In this paper a discrete, categorical model is proposed for two-: mode data matrices with binary en...
Hierarchical classes (HICLAS) models for multi-way multi-mode data constitute a unique family of cla...
Often problems result in the collection of coupled data, which consist of different N-way N-mode dat...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
Hierarchical classes (HICLAS) models constitute a distinct family of structural models for N-way N-m...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
In this paper, we investigate the hypothesis that people use feature correlations to detect inter- a...
In many research domains different pieces of information are collected regarding the same set of obj...
In many areas of the behavioral sciences, different groups of objects are measured on the same set o...
Abstract In many areas of the behavioral sciences, different groups of objects are measured on the s...
In many areas of science, research questions imply the analysis of a set of coupled data blocks, wit...
In many fields of research problems often result in the collection of coupled data, which consist of...
Research questions in several research domains imply the simultaneous analysis of different blocks o...
Hierarchical classes (HICLAS) models for multi-way multi-mode data constitute a unique family of cla...
In this paper a discrete, categorical model is proposed for two-: mode data matrices with binary en...
Hierarchical classes (HICLAS) models for multi-way multi-mode data constitute a unique family of cla...
Often problems result in the collection of coupled data, which consist of different N-way N-mode dat...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
Hierarchical classes (HICLAS) models constitute a distinct family of structural models for N-way N-m...
We develop a new component analysis framework, the Noisy-Or Component Analyzer (NOCA), that targets...
Simultaneous component analysis (SCA) is a fruitful approach to disclose the structure underlying da...
In this paper, we investigate the hypothesis that people use feature correlations to detect inter- a...