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Efficient Parameter-free Clustering Using First Neighbor Relations

About

We present a new clustering method in the form of a single clustering equation that is able to directly discover groupings in the data. The main proposition is that the first neighbor of each sample is all one needs to discover large chains and finding the groups in the data. In contrast to most existing clustering algorithms our method does not require any hyper-parameters, distance thresholds and/or the need to specify the number of clusters. The proposed algorithm belongs to the family of hierarchical agglomerative methods. The technique has a very low computational overhead, is easily scalable and applicable to large practical problems. Evaluation on well known datasets from different domains ranging between 1077 and 8.1 million samples shows substantial performance gains when compared to the existing clustering techniques.

M. Saquib Sarfraz, Vivek Sharma, Rainer Stiefelhagen• 2019

Related benchmarks

TaskDatasetResultRank
ClusteringMNIST (test)
NMI0.754
122
ClusteringCIFAR-100 (test)
ACC32
110
ClusteringUSPS
NMI78.8
82
Action SegmentationBreakfast
MoF51.9
66
ClusteringCOIL-100
ACC56.4
28
Action SegmentationBreakfast 14
MoF51.9
26
Temporal action segmentation50 Salads granularity (Eval)
MoF39.6
24
ClusteringREUTERS 10K
ACC24.1
23
Action Segmentation50Salads mid granularity
MoF33.7
19
ClusteringMice Protein
Accuracy0.157
15
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