Rival penalized competitive learning (RPCL) has been shown to be a useful tool for clustering on a set of sample data in which the number of clusters is unknown. However, the RPCL algorithm was proposed heuristically and is still in lack of a mathematical theory to describe its convergence behavior. In order to solve the convergence problem, we investigate it via a cost-function approach. By theoretical analysis, we prove that a general form of RPCL, called distance-sensitive RPCL (DSRPCL), is associated with the minimization of a cost function on the weight vectors of a competitive learning network. As a DSRPCL process decreases the cost to a local minimum, a number of weight vectors eventually fall into a hypersphere surrounding the sampl...
Determining an appropriate number of clusters is a difficult but important problem. The rival penali...
In this paper we propose two neural algorithms that can be considered a simplification and a general...
Abstract—Clustering in the neural-network literature is gener-ally based on the competitive learning...
Rival penalized competitive learning (RPCL) has been shown to be a useful tool for clustering on a s...
The rival penalized competitive learning (RPCL) algorithm has been developed to make the clustering ...
RPCL(Rival Penalized Competitive Learning)算法是一种十分有效的聚类方法,能够自动地确定数据中的类别个数.最近,我们根据其特点建立了一种价值函数,能够在正确类别...
Competitive Repetition-suppression (CoRe) clustering is a bio-inspired learning algorithm that is ca...
Abstract This paper presents a new competitive learning algorithm for data clustering, named the dyn...
In this paper, rival penalized competitive learning (RPCL) algorithms are adopted to solve the strai...
The paper introduces a robust clustering algorithm that can automatically determine the unknown clus...
Abstract—Determining a compact neural coding for a set of input stimuli is an issue that encompasses...
Competitive learning approaches with penalization or cooperation mechanism have been applied to unsu...
A general technique is proposed for embedding on-line clustering algorithms based on competitive lea...
Determining a compact neural coding for a set of input stimuli is an issue that encompasses several ...
Time series clustering provides underpinning techniques for discovering the intrinsic structure and ...
Determining an appropriate number of clusters is a difficult but important problem. The rival penali...
In this paper we propose two neural algorithms that can be considered a simplification and a general...
Abstract—Clustering in the neural-network literature is gener-ally based on the competitive learning...
Rival penalized competitive learning (RPCL) has been shown to be a useful tool for clustering on a s...
The rival penalized competitive learning (RPCL) algorithm has been developed to make the clustering ...
RPCL(Rival Penalized Competitive Learning)算法是一种十分有效的聚类方法,能够自动地确定数据中的类别个数.最近,我们根据其特点建立了一种价值函数,能够在正确类别...
Competitive Repetition-suppression (CoRe) clustering is a bio-inspired learning algorithm that is ca...
Abstract This paper presents a new competitive learning algorithm for data clustering, named the dyn...
In this paper, rival penalized competitive learning (RPCL) algorithms are adopted to solve the strai...
The paper introduces a robust clustering algorithm that can automatically determine the unknown clus...
Abstract—Determining a compact neural coding for a set of input stimuli is an issue that encompasses...
Competitive learning approaches with penalization or cooperation mechanism have been applied to unsu...
A general technique is proposed for embedding on-line clustering algorithms based on competitive lea...
Determining a compact neural coding for a set of input stimuli is an issue that encompasses several ...
Time series clustering provides underpinning techniques for discovering the intrinsic structure and ...
Determining an appropriate number of clusters is a difficult but important problem. The rival penali...
In this paper we propose two neural algorithms that can be considered a simplification and a general...
Abstract—Clustering in the neural-network literature is gener-ally based on the competitive learning...