Open Access Open Access  Restricted Access Subscription Access
Open Access Open Access Open Access  Restricted Access Restricted Access Subscription Access

A Study of Hierarchical Clustering


     

   Subscribe/Renew Journal


Clustering has various techniques which can analyze data in efficient manner and generate desired output. Among all clustering technique hierarchical clustering technique is efficient technique which can cluster data in hierarchical manner. In hierarchical clustering, all data is clustered in one cluster. Hierarchical method helps us to cluster the data objects in the form of a tree known as hierarchy. Hierarchical clustering can be performed in two ways: agglomerative clustering and divisive clustering. Agglomerative clustering is always more preferable. For a good cluster analysis, the quality of the clusters should be high. The main problems with hierarchical clustering are accuracy as complex datasets have number of attributes. Due to complex nature of dataset it is very difficult to derive accurate relationship between attributes. When the relationship between attributes is not accurate it leads to reduction in clustering accuracy. In this paper, improvement will be proposed in hierarchical clustering to drive accurate relationship between attributes and improve accuracy of clustering

Keywords

Agglomerative, Clustering, Data mining, Divisive, Hierarchical Clustering.
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 279

PDF Views: 2




  • A Study of Hierarchical Clustering

Abstract Views: 279  |  PDF Views: 2

Authors

Abstract


Clustering has various techniques which can analyze data in efficient manner and generate desired output. Among all clustering technique hierarchical clustering technique is efficient technique which can cluster data in hierarchical manner. In hierarchical clustering, all data is clustered in one cluster. Hierarchical method helps us to cluster the data objects in the form of a tree known as hierarchy. Hierarchical clustering can be performed in two ways: agglomerative clustering and divisive clustering. Agglomerative clustering is always more preferable. For a good cluster analysis, the quality of the clusters should be high. The main problems with hierarchical clustering are accuracy as complex datasets have number of attributes. Due to complex nature of dataset it is very difficult to derive accurate relationship between attributes. When the relationship between attributes is not accurate it leads to reduction in clustering accuracy. In this paper, improvement will be proposed in hierarchical clustering to drive accurate relationship between attributes and improve accuracy of clustering

Keywords


Agglomerative, Clustering, Data mining, Divisive, Hierarchical Clustering.