Clustering is a useful technique that organizes a large quantity of unordered datasets into a small number of meaningful and coherent clusters. Every clustering method is based on the index of similarity or dissimilarity between data points. However, the true intrinsic structure of the data could be correctly described by the similarity formula defined and embedded in the clustering criterion function. This paper uses squared Euclidean distance and Manhattan distance to investigates the best method for measuring similarity between data objects in sparse and high-dimensional domain which is fast, capable of providing high quality clustering result and consistent. The performances of these two methods were reported with simulated high dimensi...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...
It is reported in this paper, the results of a study of the partitioning around medoids (PAM) cluste...
In this work, the agglomerative hierarchical clustering and K-means clustering algorithms are implem...
Clustering is a useful technique that organizes a large quantity of unordered datasets into a small ...
Similarity or distance measures are core components used by distance-based clustering algorithms to ...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
Methods of data analysis and automatic processing are treated as knowledge discovery. In many cases ...
For using Data Mining, especially cluster analysis, one needs measures to determine the similarity o...
This paper introduces a measure of similarity between two clusterings of the same dataset produced b...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
In many algorithms in the field of data mining to perform clustering of given data, notion of ‘clust...
Abstract-A nonparametric clustering technique incorporating the concept of similarity based on the s...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
Similarity-based clustering is a simple but powerful technique which usually results in a clustering...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...
It is reported in this paper, the results of a study of the partitioning around medoids (PAM) cluste...
In this work, the agglomerative hierarchical clustering and K-means clustering algorithms are implem...
Clustering is a useful technique that organizes a large quantity of unordered datasets into a small ...
Similarity or distance measures are core components used by distance-based clustering algorithms to ...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
Methods of data analysis and automatic processing are treated as knowledge discovery. In many cases ...
For using Data Mining, especially cluster analysis, one needs measures to determine the similarity o...
This paper introduces a measure of similarity between two clusterings of the same dataset produced b...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
In many algorithms in the field of data mining to perform clustering of given data, notion of ‘clust...
Abstract-A nonparametric clustering technique incorporating the concept of similarity based on the s...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
Similarity-based clustering is a simple but powerful technique which usually results in a clustering...
Despite of the large number of algorithms developed for clustering, the study on comparing clusterin...
It is reported in this paper, the results of a study of the partitioning around medoids (PAM) cluste...
In this work, the agglomerative hierarchical clustering and K-means clustering algorithms are implem...