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

Enhancements in Accuracy and Computation Time of Spectral Clustering


     

   Subscribe/Renew Journal


The spectral clustering is the clustering technique which cluster similar and dissimilar elements according to the dataset elements. The various techniques have been proposed to cluster similar and dissimilar data using spectral clustering. Among various techniques affinity matrices, mean shift algorithm are used to create similarity graphs and normalized algorithm is applied to cluster data. It has been analyzed that due to single use of normalization, cluster quality is reduced as some of the data points remain un-clustered. To improve cluster quality of the algorithm, Shi & Malik is used as normalization algorithm which leads to improve cluster quality and reduction in processing time.

Keywords

Accuracy, CLARAN, Computation Time, Multiway Normalized Cut Criterion, Similarity Based Clustering,
User
Subscription Login to verify subscription
Notifications
Font Size

Abstract Views: 241

PDF Views: 0




  • Enhancements in Accuracy and Computation Time of Spectral Clustering

Abstract Views: 241  |  PDF Views: 0

Authors

Abstract


The spectral clustering is the clustering technique which cluster similar and dissimilar elements according to the dataset elements. The various techniques have been proposed to cluster similar and dissimilar data using spectral clustering. Among various techniques affinity matrices, mean shift algorithm are used to create similarity graphs and normalized algorithm is applied to cluster data. It has been analyzed that due to single use of normalization, cluster quality is reduced as some of the data points remain un-clustered. To improve cluster quality of the algorithm, Shi & Malik is used as normalization algorithm which leads to improve cluster quality and reduction in processing time.

Keywords


Accuracy, CLARAN, Computation Time, Multiway Normalized Cut Criterion, Similarity Based Clustering,