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Papers/Contrastive Hierarchical Clustering

Contrastive Hierarchical Clustering

Michał Znaleźniak, Przemysław Rola, Patryk Kaszuba, Jacek Tabor, Marek Śmieja

2023-03-03Deep ClusteringSelf-Supervised LearningImage ClusteringClustering
PaperPDFCode(official)

Abstract

Deep clustering has been dominated by flat models, which split a dataset into a predefined number of groups. Although recent methods achieve an extremely high similarity with the ground truth on popular benchmarks, the information contained in the flat partition is limited. In this paper, we introduce CoHiClust, a Contrastive Hierarchical Clustering model based on deep neural networks, which can be applied to typical image data. By employing a self-supervised learning approach, CoHiClust distills the base network into a binary tree without access to any labeled data. The hierarchical clustering structure can be used to analyze the relationship between clusters, as well as to measure the similarity between data points. Experiments demonstrate that CoHiClust generates a reasonable structure of clusters, which is consistent with our intuition and image semantics. Moreover, it obtains superior clustering accuracy on most of the image datasets compared to the state-of-the-art flat clustering models.

Results

TaskDatasetMetricValueModel
Image ClusteringFashion-MNISTAccuracy0.65CoHiClust
Image ClusteringImageNet-10ARI0.899CoHiClust
Image ClusteringImageNet-10Accuracy0.953CoHiClust
Image ClusteringImageNet-10NMI0.907CoHiClust
Image ClusteringCIFAR-10ARI0.731CoHiClust
Image ClusteringCIFAR-10Accuracy0.839CoHiClust
Image ClusteringCIFAR-10NMI0.779CoHiClust
Image ClusteringCIFAR-100ARI0.299CoHiClust
Image ClusteringCIFAR-100Accuracy0.437CoHiClust
Image ClusteringCIFAR-100NMI0.467CoHiClust
Image ClusteringMNISTAccuracy0.99CoHiClust
Image ClusteringSTL-10ARI0.474CoHiClust
Image ClusteringSTL-10Accuracy0.613CoHiClust
Image ClusteringSTL-10NMI0.584CoHiClust
Image ClusteringImagenet-dog-15ARI0.232CoHiClust
Image ClusteringImagenet-dog-15Accuracy0.355CoHiClust
Image ClusteringImagenet-dog-15NMI0.411CoHiClust

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