This paper proposes a novel and efficient clustering algorithm for probability density functions based on k-medoids. Further, a scheme used for selecting the powerful initial medoids is suggested, which speeds up the computational time significantly. Also, a general proof for convergence of the proposed algorithm is presented. The effectiveness and feasibility of the proposed algorithm are verified and compared with various existing algorithms through both artificial and real datasets in terms of adjusted Rand index, computational time, and iteration number. The numerical results reveal an outstanding performance of the proposed algorithm as well as its potential applications in real life
A new, data density based approach to clustering is presented which automatically determines the num...
In 2009, Yu et al. proposed a multimodal probability model (MPM) for clustering. This paper makes ad...
none2In this paper, we propose a method to group a set of probability density functions (pdfs) into ...
This paper proposes an evolutionary computing based automatic partitioned clustering of probability ...
AbstractThe k -medoids methods for modeling clustered data have many desirable properties such as ro...
Time-series clustering is one of the most common techniques used to discover similar structures in a...
In this paper, a novel K-means clustering algorithm is proposed. Before running the traditional Kmea...
Clustering plays a vital role in research area in the field of data mining. Clustering is a process ...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
This paper presents a biased random-key genetic algorithm for k-medoids clustering problem. A novel ...
Data mining is a technique of mining information from the raw data. It is a non trivial process of i...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
The k_means clustering algorithm has very extensive application. The paper gives out_in clustering a...
Throughout the years, considerable efforts made to tackle the clustering problem. Yet, because of t...
In this paper, we propose a novel implementation for solving the large-scale k-medoids clustering pr...
A new, data density based approach to clustering is presented which automatically determines the num...
In 2009, Yu et al. proposed a multimodal probability model (MPM) for clustering. This paper makes ad...
none2In this paper, we propose a method to group a set of probability density functions (pdfs) into ...
This paper proposes an evolutionary computing based automatic partitioned clustering of probability ...
AbstractThe k -medoids methods for modeling clustered data have many desirable properties such as ro...
Time-series clustering is one of the most common techniques used to discover similar structures in a...
In this paper, a novel K-means clustering algorithm is proposed. Before running the traditional Kmea...
Clustering plays a vital role in research area in the field of data mining. Clustering is a process ...
The probabilistic distance clustering method of the authors [2, 8], assumes the cluster membership p...
This paper presents a biased random-key genetic algorithm for k-medoids clustering problem. A novel ...
Data mining is a technique of mining information from the raw data. It is a non trivial process of i...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
The k_means clustering algorithm has very extensive application. The paper gives out_in clustering a...
Throughout the years, considerable efforts made to tackle the clustering problem. Yet, because of t...
In this paper, we propose a novel implementation for solving the large-scale k-medoids clustering pr...
A new, data density based approach to clustering is presented which automatically determines the num...
In 2009, Yu et al. proposed a multimodal probability model (MPM) for clustering. This paper makes ad...
none2In this paper, we propose a method to group a set of probability density functions (pdfs) into ...