Zhu X, Gisbrecht A, Schleif F-M, Hammer B. Approximation techniques for clustering dissimilarity data. Neurocomputing. 2012;90:72-84.Recently, diverse high quality prototype-based clustering techniques have been developed which can directly deal with data sets given by general pairwise dissimilarities rather than standard Euclidean vectors. Examples include affinity propagation, relational neural gas, or relational generative topographic mapping. Corresponding to the size of the dissimilarity matrix, these techniques scale quadratically with the size of the training set, such that training becomes prohibitive for large data volumes. In this contribution, we investigate two different linear time approximation techniques, patch processing and...
Topographic maps such as the self organizing map (SOM) or neural gas (NG) constitute powerful data m...
Partitioning a data set and extracting hidden structure from the data arises in different applicatio...
We perform new theoretical as well as first-time experimental studies for the NP-hard problem to fin...
Abstract. Clustering constitutes an ubiquitous problem when dealing with huge data sets for data com...
Hammer B, Hasenfuss A. Topographic Mapping of Large Dissimilarity Data Sets. Neural Computation. 201...
Hasenfuss A, Hammer B, Schleif F-M, Villmann T. Neural gas clustering for dissimilarity data with co...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
One of the critical aspects of clustering algorithms is the correct identification of the dissimilar...
Clustering aims to partition a data set into homogenous groups which gather similar objects. Object ...
We introduce relational variants of neural gas, a very efficient and powerful neural clustering algo...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
Hammer B, Hasenfuss A. Clustering very large dissimilarity data sets. In: Schwenker F, El Gayar N, e...
In some application contexts, data are better described by a matrix of pairwise dissimilarities rath...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
Clustering is the process of grouping a set ofphysical or abstract objects into classes of similarob...
Topographic maps such as the self organizing map (SOM) or neural gas (NG) constitute powerful data m...
Partitioning a data set and extracting hidden structure from the data arises in different applicatio...
We perform new theoretical as well as first-time experimental studies for the NP-hard problem to fin...
Abstract. Clustering constitutes an ubiquitous problem when dealing with huge data sets for data com...
Hammer B, Hasenfuss A. Topographic Mapping of Large Dissimilarity Data Sets. Neural Computation. 201...
Hasenfuss A, Hammer B, Schleif F-M, Villmann T. Neural gas clustering for dissimilarity data with co...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
One of the critical aspects of clustering algorithms is the correct identification of the dissimilar...
Clustering aims to partition a data set into homogenous groups which gather similar objects. Object ...
We introduce relational variants of neural gas, a very efficient and powerful neural clustering algo...
ONE OF THE CRITICAL ASPECTS OF CLUSTERING ALGORITHMS IS THE CORRECT IDENTIFICATION OF THE DISSIMILAR...
Hammer B, Hasenfuss A. Clustering very large dissimilarity data sets. In: Schwenker F, El Gayar N, e...
In some application contexts, data are better described by a matrix of pairwise dissimilarities rath...
International audienceThis paper introduces hard clustering algorithms that are able to partition ob...
Clustering is the process of grouping a set ofphysical or abstract objects into classes of similarob...
Topographic maps such as the self organizing map (SOM) or neural gas (NG) constitute powerful data m...
Partitioning a data set and extracting hidden structure from the data arises in different applicatio...
We perform new theoretical as well as first-time experimental studies for the NP-hard problem to fin...