Heuristic data requires appropriate clustering methods to avoid casting doubt on the information generated by the grouping process. Determining an optimal cluster choice from the results of grouping is still challenging. This study aimed to analyze the four numerical measurement formulas in light of the data patterns from categorical that are now accessible to give users of heuristic data recommendations for how to derive knowledge or information from the best clusters. The method used was clustering with four measurements: Euclidean, Canberra, Manhattan, and Dynamic Time Warping and Elbow approach for optimizing. The Elbow with Sum Square Error (SSE) is employed to calculate the optimal cluster. The number of test clusters ranges from k = ...
Cluster analysis is used to group objects based on the similarity of characteristics between objects...
Grouping can use clustering to group data based on the similarity between the data, so that the data...
High accuracy of results is a very important aspect in any clustering problem t determines the effec...
The K-Means Clustering algorithm is commonly used by researchers in grouping data. The main problem ...
huge data is a big challenge. Clustering technique is able to find hidden patterns and to extract us...
Clustering is a useful technique that organizes a large quantity of unordered datasets into a small ...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
In data mining, there are several algorithms that are often used in grouping data, including K-Means...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Clustering is an unsupervised classification method with major aim of partitioning, where objects i...
A problem that arises quite frequently in statistics is that of identifying groups, or clusters, of ...
Cluster analysis is used to group objects based on the similarity of characteristics between objects...
Grouping can use clustering to group data based on the similarity between the data, so that the data...
High accuracy of results is a very important aspect in any clustering problem t determines the effec...
The K-Means Clustering algorithm is commonly used by researchers in grouping data. The main problem ...
huge data is a big challenge. Clustering technique is able to find hidden patterns and to extract us...
Clustering is a useful technique that organizes a large quantity of unordered datasets into a small ...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
In data mining, there are several algorithms that are often used in grouping data, including K-Means...
Distance measures play an important role in cluster analysis. There is no single distance measure th...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Clustering is a technique in data mining that groups a set of data into groups (clusters) of similar...
Clustering is an unsupervised classification method with major aim of partitioning, where objects i...
A problem that arises quite frequently in statistics is that of identifying groups, or clusters, of ...
Cluster analysis is used to group objects based on the similarity of characteristics between objects...
Grouping can use clustering to group data based on the similarity between the data, so that the data...
High accuracy of results is a very important aspect in any clustering problem t determines the effec...