[[abstract]]Many validity measures have been proposed for evaluating clustering results. Most of these popular validity measures do not work well for clusters with different densities and/or sizes. They usually have a tendency of ignoring clusters with low densities. In this paper, we propose a new validity measure that can deal with this situation. In addition, we also propose a modified K-means algorithm that can assign more cluster centres to areas with low densities of data than the conventional K-means algorithm does. First, several artificial data sets are used to test the performance of the proposed measure. Then the proposed measure and the modified K-means algorithm are applied to reduce the edge degradation in vector quantisation ...
Many different relative clustering validity criteria exist that are very useful as quantitative meas...
Clustering algorithms can be described as unsu-pervised learning algorithms in machine learning proc...
Abstract: In this paper, a cluster validity measure is presented to infer the appropriateness of dat...
The main disadvantage of the k-means algorithm is that the number of clusters, K, must be supplied a...
One of the most challenging aspects of clustering is validation, which is the objective and quantita...
Abstract:- Clustering is a process of discovering groups of objects such that the objects of the sam...
In this paper, an amended K-Means algorithm called K-Means++ is implemented for color quantization. ...
Abstract—A hierarchical lossy image set compression al-gorithm (HMSTa) has recently been proposed fo...
The need for the ability to cluster unknown data to better understand its relationship to know data ...
One of the most challenging aspects of clustering is valida-tion, which is the objective and quantit...
Cluster analysis is an important problem in data mining and machine learning. In reality, clustering...
Segmentation of colour images is an important issue in various machine vision and image processing a...
Abstract—We review two clustering algorithms (hard c-means and single linkage) and three indexes of ...
With the development of technology and digital media, the quality of the data used is also getting h...
International audienceImage coding based on clustering provides immediate access to targeted feature...
Many different relative clustering validity criteria exist that are very useful as quantitative meas...
Clustering algorithms can be described as unsu-pervised learning algorithms in machine learning proc...
Abstract: In this paper, a cluster validity measure is presented to infer the appropriateness of dat...
The main disadvantage of the k-means algorithm is that the number of clusters, K, must be supplied a...
One of the most challenging aspects of clustering is validation, which is the objective and quantita...
Abstract:- Clustering is a process of discovering groups of objects such that the objects of the sam...
In this paper, an amended K-Means algorithm called K-Means++ is implemented for color quantization. ...
Abstract—A hierarchical lossy image set compression al-gorithm (HMSTa) has recently been proposed fo...
The need for the ability to cluster unknown data to better understand its relationship to know data ...
One of the most challenging aspects of clustering is valida-tion, which is the objective and quantit...
Cluster analysis is an important problem in data mining and machine learning. In reality, clustering...
Segmentation of colour images is an important issue in various machine vision and image processing a...
Abstract—We review two clustering algorithms (hard c-means and single linkage) and three indexes of ...
With the development of technology and digital media, the quality of the data used is also getting h...
International audienceImage coding based on clustering provides immediate access to targeted feature...
Many different relative clustering validity criteria exist that are very useful as quantitative meas...
Clustering algorithms can be described as unsu-pervised learning algorithms in machine learning proc...
Abstract: In this paper, a cluster validity measure is presented to infer the appropriateness of dat...