v ABSTRACT The presence of outlying observations is a common problem in most statistical analysis. This case is also true when using cluster analysis techniques. Cluster analysis basically detects homogeneous clusters with large heterogeneity among them. To deal with outliers, a correct procedure in cluster analysis is needed because usually outliers may appear joined together, which may lead to the wrong structure of clusters. New method of trimming in clustering (TCLUST) known as RTCLUST is proposed in this research that uses some information from TCLUST, partition around medoid (PAM), doubtful cluster and local outlier factor (LOF). TCLUST is a clustering method with constraint on the covariance matrices. For this case the constraint use...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
Clustering is the process of grouping a set of objects into classes or clusters so that objects with...
[[abstract]]In this paper, a two-phase clustering algorithm for outliers detection is proposed. We f...
TCLUST is a method in statistical clustering technique which is based on modification of trimmed k-m...
MCOKE algorithm in identifying data objects to multi cluster is known for its simplicity and effecti...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
[[abstract]]Identifying outliers an remainder clusters which are used to designate few patterns that...
K-Means is an unsupervised method partitions the input space into clusters. K-Means algorithm has a ...
Outliers can be extremely harmful when applying well-known Cluster Analysis methods. More- over, clu...
Abstract: In modern era there are lots of data mining algorithms which focus on clustering methods. ...
Outliers are abnormal data, and the detection of outliers in multivariate data has always been of in...
This paper is a comparative study of several algorithms for detecting multiple outliers in circular-...
Clustering is a fundamental problem in unsupervised learning. In many real-world applications, the t...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
Nowadays many data mining algorithms focus on clustering methods. There are also a lot of approaches...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
Clustering is the process of grouping a set of objects into classes or clusters so that objects with...
[[abstract]]In this paper, a two-phase clustering algorithm for outliers detection is proposed. We f...
TCLUST is a method in statistical clustering technique which is based on modification of trimmed k-m...
MCOKE algorithm in identifying data objects to multi cluster is known for its simplicity and effecti...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
[[abstract]]Identifying outliers an remainder clusters which are used to designate few patterns that...
K-Means is an unsupervised method partitions the input space into clusters. K-Means algorithm has a ...
Outliers can be extremely harmful when applying well-known Cluster Analysis methods. More- over, clu...
Abstract: In modern era there are lots of data mining algorithms which focus on clustering methods. ...
Outliers are abnormal data, and the detection of outliers in multivariate data has always been of in...
This paper is a comparative study of several algorithms for detecting multiple outliers in circular-...
Clustering is a fundamental problem in unsupervised learning. In many real-world applications, the t...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
Nowadays many data mining algorithms focus on clustering methods. There are also a lot of approaches...
This study enhances K-means Mahalanobis clustering using Density Power Divergence (DPD) for outlier ...
Clustering is the process of grouping a set of objects into classes or clusters so that objects with...
[[abstract]]In this paper, a two-phase clustering algorithm for outliers detection is proposed. We f...