AbstractAlthough there have been many researches on cluster analysis considering feature (or variable) weights, little effort has been made regarding sample weights in clustering. In practice, not every sample in a data set has the same importance in cluster analysis. Therefore, it is interesting to obtain the proper sample weights for clustering a data set. In this paper, we consider a probability distribution over a data set to represent its sample weights. We then apply the maximum entropy principle to automatically compute these sample weights for clustering. Such method can generate the sample-weighted versions of most clustering algorithms, such as k-means, fuzzy c-means (FCM) and expectation & maximization (EM), etc. The proposed sam...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
We introduce a robust k-means-based clustering method for high-dimensional data where not only outli...
Abstract—Data clustering means partitioning the samples in similar clusters, in a way that samples i...
AbstractAlthough there have been many researches on cluster analysis considering feature (or variabl...
In 2009, Yu et al. proposed a multimodal probability model (MPM) for clustering. This paper makes ad...
Although there have been many researches in cluster analysis to consider on feature weights, little ...
Clustering ensemble has emerged as a powerful tool for improving both the robustness and the stabili...
Abstract- The well-known generalisation of hard C-means (HCM) clustering is fuzzy C-means (FCM) clus...
Clustering is an unsupervised process to determine which unlabeled objects in a set share interestin...
This paper proposes a k-means type clustering algorithm that can automatically calculate variable we...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...
Abstract—This paper proposes a k-means type clustering algorithm that can automatically calculate va...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
This paper proposes a clustering method based on a randomized representation of an ensemble of possi...
Unsupervised clustering techniques are a valuable source of information for determining how to divid...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
We introduce a robust k-means-based clustering method for high-dimensional data where not only outli...
Abstract—Data clustering means partitioning the samples in similar clusters, in a way that samples i...
AbstractAlthough there have been many researches on cluster analysis considering feature (or variabl...
In 2009, Yu et al. proposed a multimodal probability model (MPM) for clustering. This paper makes ad...
Although there have been many researches in cluster analysis to consider on feature weights, little ...
Clustering ensemble has emerged as a powerful tool for improving both the robustness and the stabili...
Abstract- The well-known generalisation of hard C-means (HCM) clustering is fuzzy C-means (FCM) clus...
Clustering is an unsupervised process to determine which unlabeled objects in a set share interestin...
This paper proposes a k-means type clustering algorithm that can automatically calculate variable we...
The cluster analysis of real-life data often encounters the challenges of noisy data or may rely hea...
Abstract—This paper proposes a k-means type clustering algorithm that can automatically calculate va...
Abstract—Clustering methods need to be robust if they are to be useful in practice. In this paper, w...
This paper proposes a clustering method based on a randomized representation of an ensemble of possi...
Unsupervised clustering techniques are a valuable source of information for determining how to divid...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
We introduce a robust k-means-based clustering method for high-dimensional data where not only outli...
Abstract—Data clustering means partitioning the samples in similar clusters, in a way that samples i...