This paper presents a methodology for partitioning two modes (objects and occasions) of three-way dissimilarity data based on the statistical modeling approach of fitting an expected clustering model, expressed in terms of dissimilarities and specified by a classification matrix, to the observed three-way two-mode data. Specifically, occasions are partitioned into homogeneous classes of dissimilarity matrices, and, within each class, a classification matrix, specifying a consensus partition of the objects, is identified. The parameters of the model are estimated in a least-squares fitting context and an efficient coordinate descent algorithm is given
none1noThe technological progress of the last decades has made a huge amount of information availabl...
International audienceClustering is a popular task in knowledge discovery. In this chapter we illust...
To reveal the structure underlying two-way two-mode object by variable data, Mirkin (1987) has propo...
This paper presents a methodology for partitioning two modes (objects and occasions) of three-way di...
Large data sets organized into a three-way proximity array are generally difficult to comprehend and...
A classification model for three-way dissimilarity data is presented including the idea to identify ...
The paper presents a methodology for classifying three-way dissimilarity data, which are reconstruct...
A novel clustering model for three-way data concerning a set of objects on which variables are measu...
International audienceWe introduce partitioning clustering models and algorithms that are able to pa...
A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli b...
In this paper two techniques for units clustering and factorial dimensionality reduction of variable...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
International audienceWe present a new algorithm capable of partitioning sets of objects by taking s...
none1noThe technological progress of the last decades has made a huge amount of information availabl...
International audienceClustering is a popular task in knowledge discovery. In this chapter we illust...
To reveal the structure underlying two-way two-mode object by variable data, Mirkin (1987) has propo...
This paper presents a methodology for partitioning two modes (objects and occasions) of three-way di...
Large data sets organized into a three-way proximity array are generally difficult to comprehend and...
A classification model for three-way dissimilarity data is presented including the idea to identify ...
The paper presents a methodology for classifying three-way dissimilarity data, which are reconstruct...
A novel clustering model for three-way data concerning a set of objects on which variables are measu...
International audienceWe introduce partitioning clustering models and algorithms that are able to pa...
A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli b...
In this paper two techniques for units clustering and factorial dimensionality reduction of variable...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
International audienceThis paper introduces fuzzy clustering algorithms that can partition objects t...
International audienceWe present a new algorithm capable of partitioning sets of objects by taking s...
none1noThe technological progress of the last decades has made a huge amount of information availabl...
International audienceClustering is a popular task in knowledge discovery. In this chapter we illust...
To reveal the structure underlying two-way two-mode object by variable data, Mirkin (1987) has propo...