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Border-Peeling Clustering

About

In this paper, we present a novel non-parametric clustering technique. Our technique is based on the notion that each latent cluster is comprised of layers that surround its core, where the external layers, or border points, implicitly separate the clusters. Unlike previous techniques, such as DBSCAN, where the cores of the clusters are defined directly by their densities, here the latent cores are revealed by a progressive peeling of the border points. Analyzing the density of the local neighborhoods allows identifying the border points and associating them with points of inner layers. We show that the peeling process adapts to the local densities and characteristics to successfully separate adjacent clusters (of possibly different densities). We extensively tested our technique on large sets of labeled data, including high-dimensional datasets of deep features that were trained by a convolutional neural network. We show that our technique is competitive to other state-of-the-art non-parametric methods using a fixed set of parameters throughout the experiments.

Hadar Averbuch-Elor, Nadav Bar, Daniel Cohen-Or• 2016

Related benchmarks

TaskDatasetResultRank
ClusteringWiki
Accuracy48.33
23
ClusteringMNIST
Running Time13.12
18
ClusteringWiki
Clustering Time (s)4.41
16
ClusteringMNIST
Accuracy (ACC)50.04
13
ClusteringHW2
ACC14.1
13
ClusteringMSRC V1
Running Time0.1
12
ClusteringHW2
Running Time2.5
12
ClusteringWiki
Estimated Cluster Count15
10
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