K-medoids clustering uses distance measurement to find and classify data that have similarities and inequalities. The distance measurement method selection can affect the clustering performance for a dataset. Several studies use the Euclidean and Gower distance as measurement methods in numerical data clustering. This study aims to compare the performance of the k-medoids clustering on a numerical dataset using the Euclidean and Gower distance. This study used seven numerical datasets and Silhouette, Dunn, and Connectivity indexes in the clustering evaluation. The Euclidean distance is superior in two values of Silhouette and Connectivity indexes so that Euclidean has a good data grouping structure, while the Gower is superior in Dunn index...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
AbstractClustering plays a very vital role in exploring data, creating predictions and to overcome t...
AbstractRecent years have explored various clustering strategies to partition datasets comprising of...
It is reported in this paper, the results of a study of the partitioning around medoids (PAM) cluste...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
Cluster analysis has been widely used in several disciplines, such as statistics, software engineeri...
Heuristic data requires appropriate clustering methods to avoid casting doubt on the information gen...
Distance measure plays an important role in clustering data points. Choosing the right distance meas...
Clustering is a useful technique that organizes a large quantity of unordered datasets into a small ...
The K-Means Clustering algorithm is commonly used by researchers in grouping data. The main problem ...
Grouping can use clustering to group data based on the similarity between the data, so that the data...
Distance metrics are broadly used in different research areas and applications, such as bio-informat...
Many machine learning algorithms depend on the choice of an appropriate similarity or distance measu...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Cluster analysis is used to group objects based on the similarity of characteristics between objects...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
AbstractClustering plays a very vital role in exploring data, creating predictions and to overcome t...
AbstractRecent years have explored various clustering strategies to partition datasets comprising of...
It is reported in this paper, the results of a study of the partitioning around medoids (PAM) cluste...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
Cluster analysis has been widely used in several disciplines, such as statistics, software engineeri...
Heuristic data requires appropriate clustering methods to avoid casting doubt on the information gen...
Distance measure plays an important role in clustering data points. Choosing the right distance meas...
Clustering is a useful technique that organizes a large quantity of unordered datasets into a small ...
The K-Means Clustering algorithm is commonly used by researchers in grouping data. The main problem ...
Grouping can use clustering to group data based on the similarity between the data, so that the data...
Distance metrics are broadly used in different research areas and applications, such as bio-informat...
Many machine learning algorithms depend on the choice of an appropriate similarity or distance measu...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Cluster analysis is used to group objects based on the similarity of characteristics between objects...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
AbstractClustering plays a very vital role in exploring data, creating predictions and to overcome t...
AbstractRecent years have explored various clustering strategies to partition datasets comprising of...