Clustering has been widely used in different fields of science, technology, social science, and so forth. In real world, numeric as well as categorical features are usually used to describe the data objects. Accordingly, many clustering methods can process datasets that are either numeric or categorical. Recently, algorithms that can handle the mixed data clustering problems have been developed. Affinity propagation (AP) algorithm is an exemplar-based clustering method which has demonstrated good performance on a wide variety of datasets. However, it has limitations on processing mixed datasets. In this paper, we propose a novel similarity measure for mixed type datasets and an adaptive AP clustering algorithm is proposed to cluster the mix...
National audienceA new Data Clustering algorithm, Affinity Propagation suffers from its quadratic co...
Categorical data has always posed a challenge in data analysis through clustering. With the increasi...
Traditional clustering algorithms are no longer suitable for use in data mining applications that ma...
In recent years, two new data clustering algorithms have been proposed. One of them is Affinity Prop...
2013-10-01We propose an efficient approach to clustering datasets with mixed type attributes (both n...
Clustering is an active research topic in data mining and different methods have been proposed in th...
International audienceIn many domains, we face heterogeneous data with both numeric and categorical ...
In recent years, two new data clustering algorithms have been proposed. One of them isAffinity Propa...
Most of the existing clustering approaches concentrate on purely numerical or categorical data only,...
Abstract- Affinity propagation based clustering algorithm will be individually placed on each and ev...
As an important clustering algorithm, Affinity Propagation (AP) algorithm can quickly find the reaso...
AbstractRecent years have explored various clustering strategies to partition datasets comprising of...
National audienceA new Data Clustering algorithm, Affinity Propagation suffers from its quadratic co...
International audienceA new clustering algorithm Affinity Propagation (AP) is hindered by its quadra...
A set of clustering algorithms with proper weight on the formulation of distance which extend to mix...
National audienceA new Data Clustering algorithm, Affinity Propagation suffers from its quadratic co...
Categorical data has always posed a challenge in data analysis through clustering. With the increasi...
Traditional clustering algorithms are no longer suitable for use in data mining applications that ma...
In recent years, two new data clustering algorithms have been proposed. One of them is Affinity Prop...
2013-10-01We propose an efficient approach to clustering datasets with mixed type attributes (both n...
Clustering is an active research topic in data mining and different methods have been proposed in th...
International audienceIn many domains, we face heterogeneous data with both numeric and categorical ...
In recent years, two new data clustering algorithms have been proposed. One of them isAffinity Propa...
Most of the existing clustering approaches concentrate on purely numerical or categorical data only,...
Abstract- Affinity propagation based clustering algorithm will be individually placed on each and ev...
As an important clustering algorithm, Affinity Propagation (AP) algorithm can quickly find the reaso...
AbstractRecent years have explored various clustering strategies to partition datasets comprising of...
National audienceA new Data Clustering algorithm, Affinity Propagation suffers from its quadratic co...
International audienceA new clustering algorithm Affinity Propagation (AP) is hindered by its quadra...
A set of clustering algorithms with proper weight on the formulation of distance which extend to mix...
National audienceA new Data Clustering algorithm, Affinity Propagation suffers from its quadratic co...
Categorical data has always posed a challenge in data analysis through clustering. With the increasi...
Traditional clustering algorithms are no longer suitable for use in data mining applications that ma...