Data analysis in high-dimensional spaces aims at obtaining a synthetic description of a data set, revealing its main structure and its salient features. We here introduce an approach providing this description in the form of a topography of the data, namely a human-readable chart of the probability density from which the data are harvested. The approach is based on an unsupervised extension of Density Peak clustering and on a non-parametric density estimator that measures the probability density in the manifold containing the data. This allows finding automatically the number and the height of the peaks of the probability density, and the depth of the “valleys” separating them. Importantly, the density estimator provides a measure of the er...
This paper proposes a novel nonparametric clustering algorithm capable of identifying shape-free clu...
The study of point cloud data sampled from a stratification, a collection of manifolds with possible...
We study generalized density-based clustering in which sharply defined clusters such as clusters on ...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
Unsupervised clustering algorithm is successfully applied in many fields. While the method of fast s...
Clustering aims to differentiate objects from different groups (clusters) by similarities or distanc...
Although Hartigan (1975) had already put forward the idea of connecting identification of subpopulat...
The density peak clustering (DPC) algorithm is designed to quickly identify intricate-shaped cluster...
Clustering is an important technology of data mining, which plays a vital role in bioscience, social...
Finding clusters in data is a challenging problem especially when the clusters are being of widely v...
We consider the problem of analyzing data for which no straight forward and meaningful Euclidean rep...
The density-based formulation aims at recasting the clustering problem to a mathematically sound fra...
We propose a theoretically and practically improved density-based, hierarchical clustering method, p...
Density-based clustering algorithms are able to identify clusters of arbitrary shapes and sizes in a...
Clustering methods in data mining are widely used to detect hotspots in many domains. They play an i...
This paper proposes a novel nonparametric clustering algorithm capable of identifying shape-free clu...
The study of point cloud data sampled from a stratification, a collection of manifolds with possible...
We study generalized density-based clustering in which sharply defined clusters such as clusters on ...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
Unsupervised clustering algorithm is successfully applied in many fields. While the method of fast s...
Clustering aims to differentiate objects from different groups (clusters) by similarities or distanc...
Although Hartigan (1975) had already put forward the idea of connecting identification of subpopulat...
The density peak clustering (DPC) algorithm is designed to quickly identify intricate-shaped cluster...
Clustering is an important technology of data mining, which plays a vital role in bioscience, social...
Finding clusters in data is a challenging problem especially when the clusters are being of widely v...
We consider the problem of analyzing data for which no straight forward and meaningful Euclidean rep...
The density-based formulation aims at recasting the clustering problem to a mathematically sound fra...
We propose a theoretically and practically improved density-based, hierarchical clustering method, p...
Density-based clustering algorithms are able to identify clusters of arbitrary shapes and sizes in a...
Clustering methods in data mining are widely used to detect hotspots in many domains. They play an i...
This paper proposes a novel nonparametric clustering algorithm capable of identifying shape-free clu...
The study of point cloud data sampled from a stratification, a collection of manifolds with possible...
We study generalized density-based clustering in which sharply defined clusters such as clusters on ...