AbstractA new online clustering method called E2GK (Evidential Evolving Gustafson–Kessel) is introduced. This partitional clustering algorithm is based on the concept of credal partition defined in the theoretical framework of belief functions. A credal partition is derived online by applying an algorithm resulting from the adaptation of the Evolving Gustafson–Kessel (EGK) algorithm. Online partitioning of data streams is then possible with a meaningful interpretation of the data structure. A comparative study with the original online procedure shows that E2GK outperforms EGK on different entry data sets. To show the performance of E2GK, several experiments have been conducted on synthetic data sets as well as on data collected from a real ...
Abstract—Extraction of patterns out of streaming data that are generated from geographically dispers...
International audienceTraditional evidential clustering tends to build clusters where the number of ...
A simplified clustering algorithm that enables on-line partitioning of data streams is proposed. T...
International audienceA new online clustering method called E2GK (Evidential Evolving Gustafson-Kess...
AbstractA new online clustering method called E2GK (Evidential Evolving Gustafson–Kessel) is introdu...
International audienceA new online clustering method, called E2GK (Evidential Evolving Gustafson-Kes...
International audienceCondition-based maintenance (CBM) appears to be a key element in modern mainte...
Abstract — Condition-based maintenance (CBM) appears to be a key element in modern maintenance pract...
International audienceIn evidential clustering, uncertainty about the assignment of objects to clust...
International audienceThis paper introduces a new evidential clustering method based on the notion o...
International audienceIn evidential clustering, the membership of objects to clusters is considered ...
A process of similar data items into groups is called data clustering. Partitioning a Data Set into ...
Online clustering for unsupervised data requires fast and accurate analysis based on meaningful kno...
This book summarizes the state-of-the-art in partitional clustering. Clustering, the unsupervised cl...
The chapter deals with a recursive clustering algorithm that enables a real time partitioning of da...
Abstract—Extraction of patterns out of streaming data that are generated from geographically dispers...
International audienceTraditional evidential clustering tends to build clusters where the number of ...
A simplified clustering algorithm that enables on-line partitioning of data streams is proposed. T...
International audienceA new online clustering method called E2GK (Evidential Evolving Gustafson-Kess...
AbstractA new online clustering method called E2GK (Evidential Evolving Gustafson–Kessel) is introdu...
International audienceA new online clustering method, called E2GK (Evidential Evolving Gustafson-Kes...
International audienceCondition-based maintenance (CBM) appears to be a key element in modern mainte...
Abstract — Condition-based maintenance (CBM) appears to be a key element in modern maintenance pract...
International audienceIn evidential clustering, uncertainty about the assignment of objects to clust...
International audienceThis paper introduces a new evidential clustering method based on the notion o...
International audienceIn evidential clustering, the membership of objects to clusters is considered ...
A process of similar data items into groups is called data clustering. Partitioning a Data Set into ...
Online clustering for unsupervised data requires fast and accurate analysis based on meaningful kno...
This book summarizes the state-of-the-art in partitional clustering. Clustering, the unsupervised cl...
The chapter deals with a recursive clustering algorithm that enables a real time partitioning of da...
Abstract—Extraction of patterns out of streaming data that are generated from geographically dispers...
International audienceTraditional evidential clustering tends to build clusters where the number of ...
A simplified clustering algorithm that enables on-line partitioning of data streams is proposed. T...