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DenMune: Density peak based clustering using mutual nearest neighbors

About

Many clustering algorithms fail when clusters are of arbitrary shapes, of varying densities, or the data classes are unbalanced and close to each other, even in two dimensions. A novel clustering algorithm, DenMune is presented to meet this challenge. It is based on identifying dense regions using mutual nearest neighborhoods of size K, where K is the only parameter required from the user, besides obeying the mutual nearest neighbor consistency principle. The algorithm is stable for a wide range of values of K. Moreover, it is able to automatically detect and remove noise from the clustering process as well as detecting the target clusters. It produces robust results on various low and high-dimensional datasets relative to several known state-of-the-art clustering algorithms.

Mohamed Abbas, Adel El-Zoghobi, Amin Shoukry• 2023

Related benchmarks

TaskDatasetResultRank
ClusteringWiki
Accuracy10.19
23
ClusteringCIFAR10
Running Time141.4
21
ClusteringMNIST
Running Time10.04
18
ClusteringFashion
Accuracy1.83
17
ClusteringWiki
Clustering Time (s)5.34
16
ClusteringHW2
ACC20.05
13
ClusteringMNIST
Accuracy (ACC)9.1
13
ClusteringMSRC V1
Running Time0.62
12
ClusteringHW2
Running Time3.78
12
ClusteringWiki
Estimated Cluster Count247
10
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