The paper presents a methodology for classifying three-way dissimilarity data, which are reconstructed by a small number of consensus classifications of the objects each defined by a sum of two order constrained distance matrices, so as to identify both a partition and an indexed hierarchy. Specifically, the dissimilarity matrices are partitioned in homogeneous classes and, within each class, a partition and an indexed hierarchy are simultaneously fitted. The model proposed is mathematically formalized as a constrained mixed-integer quadratic problem to be fitted in the least-squares sense and an alternating least-squares algorithm is proposed which is computationally efficient. Two applications of the methodology are also described togethe...
Abstract: This paper introduces a novel classification algorithm named MAP-DID. This algorithm combi...
In this Chapter, the state-of-the-art approaches for the classification of multi-way data is present...
A number of methods for the analysis of three-way data are described and shown to be variants of pri...
A classification model for three-way dissimilarity data is presented including the idea to identify ...
This paper presents a methodology for partitioning two modes (objects and occasions) of three-way di...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
The dissimilarity representation has demonstrated advantages in the solution of classification probl...
Abstract. The dissimilarity representation has demonstrated advan-tages in the solution of classific...
Abstract. The representation of objects by multi-dimensional arrays is widely applied in many resear...
Large data sets organized into a three-way proximity array are generally difficult to comprehend and...
A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli b...
International audienceWe present a new algorithm capable of partitioning sets of objects by taking s...
A discrete clustering model together with a continuous factorial one are fined simultaneously to two...
We study the problem of classification when only a dissimilarity function between objects is accessi...
We study the problem of classification when only a dissimilarity function between objects is accessi...
Abstract: This paper introduces a novel classification algorithm named MAP-DID. This algorithm combi...
In this Chapter, the state-of-the-art approaches for the classification of multi-way data is present...
A number of methods for the analysis of three-way data are described and shown to be variants of pri...
A classification model for three-way dissimilarity data is presented including the idea to identify ...
This paper presents a methodology for partitioning two modes (objects and occasions) of three-way di...
175 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Scaling and clustering techni...
The dissimilarity representation has demonstrated advantages in the solution of classification probl...
Abstract. The dissimilarity representation has demonstrated advan-tages in the solution of classific...
Abstract. The representation of objects by multi-dimensional arrays is widely applied in many resear...
Large data sets organized into a three-way proximity array are generally difficult to comprehend and...
A weighted Euclidean distance model for analyzing three-way dissimilarity data (stimuli by stimuli b...
International audienceWe present a new algorithm capable of partitioning sets of objects by taking s...
A discrete clustering model together with a continuous factorial one are fined simultaneously to two...
We study the problem of classification when only a dissimilarity function between objects is accessi...
We study the problem of classification when only a dissimilarity function between objects is accessi...
Abstract: This paper introduces a novel classification algorithm named MAP-DID. This algorithm combi...
In this Chapter, the state-of-the-art approaches for the classification of multi-way data is present...
A number of methods for the analysis of three-way data are described and shown to be variants of pri...