This paper proposes a novel nonparametric clustering algorithm capable of identifying shape-free clusters. This algorithm is based on a nonparametric estimation of the normalized density derivative (NDD) and the local convexity of the density distribution function, both of which are represented in a very concise form in terms of neighbor numbers. We use NDD to measure the dissimilarity between each pair of observations in a local neighborhood and to build a connectivity graph. Combined with the local convexity, this similarity measure can detect observations in local minima (valleys) of the density function, which separate observations in different major clusters. We demonstrate that this algorithm has a close relationship with the single-l...
A method for determining the mutual nearest neighbours (MNN) and mutual neighbourhood value (mnv) of...
Abstract. We present a set of clustering algorithms that identify cluster boundaries by searching fo...
Most density-based clustering algorithms suffer from large density variations among clusters. This p...
Although Hartigan (1975) had already put forward the idea of connecting identification of subpopula...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
A nonparametric, hierarchical, disaggregative clustering algorithm is developed using a novel simila...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
The goal of clustering is to detect the presence of distinct groups in a data set and assign group l...
Given a set of points, the goal of data clustering is to group them into clusters, such that the int...
We propose a new technique to perform unsupervised data classification (clustering) based on density...
We discuss a novel statistical framework for image segmentation based on nonparametric clustering. B...
A new clustering approach based on mode identification is developed by applying new optimization tec...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...
In this dissertation, we consider the clustering problem in data sets with unknown number of cluster...
A method for determining the mutual nearest neighbours (MNN) and mutual neighbourhood value (mnv) of...
Abstract. We present a set of clustering algorithms that identify cluster boundaries by searching fo...
Most density-based clustering algorithms suffer from large density variations among clusters. This p...
Although Hartigan (1975) had already put forward the idea of connecting identification of subpopula...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
A nonparametric, hierarchical, disaggregative clustering algorithm is developed using a novel simila...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
When it comes to clustering nonconvex shapes, two paradigms are used to find the most suitable clust...
The goal of clustering is to detect the presence of distinct groups in a data set and assign group l...
Given a set of points, the goal of data clustering is to group them into clusters, such that the int...
We propose a new technique to perform unsupervised data classification (clustering) based on density...
We discuss a novel statistical framework for image segmentation based on nonparametric clustering. B...
A new clustering approach based on mode identification is developed by applying new optimization tec...
This paper presents an improved clustering algorithm for categorizing data with arbitrary shapes. Mo...
In this dissertation, we consider the clustering problem in data sets with unknown number of cluster...
A method for determining the mutual nearest neighbours (MNN) and mutual neighbourhood value (mnv) of...
Abstract. We present a set of clustering algorithms that identify cluster boundaries by searching fo...
Most density-based clustering algorithms suffer from large density variations among clusters. This p...