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Papers/Clustering-friendly Representation Learning via Instance D...

Clustering-friendly Representation Learning via Instance Discrimination and Feature Decorrelation

Yaling Tao, Kentaro Takagi, Kouta Nakata

2021-05-31ICLR 2021 1Deep ClusteringRepresentation LearningImage ClusteringClustering
PaperPDFCode(official)

Abstract

Clustering is one of the most fundamental tasks in machine learning. Recently, deep clustering has become a major trend in clustering techniques. Representation learning often plays an important role in the effectiveness of deep clustering, and thus can be a principal cause of performance degradation. In this paper, we propose a clustering-friendly representation learning method using instance discrimination and feature decorrelation. Our deep-learning-based representation learning method is motivated by the properties of classical spectral clustering. Instance discrimination learns similarities among data and feature decorrelation removes redundant correlation among features. We utilize an instance discrimination method in which learning individual instance classes leads to learning similarity among instances. Through detailed experiments and examination, we show that the approach can be adapted to learning a latent space for clustering. We design novel softmax-formulated decorrelation constraints for learning. In evaluations of image clustering using CIFAR-10 and ImageNet-10, our method achieves accuracy of 81.5% and 95.4%, respectively. We also show that the softmax-formulated constraints are compatible with various neural networks.

Results

TaskDatasetMetricValueModel
Image ClusteringImageNet-10ARI0.901IDFD
Image ClusteringImageNet-10Accuracy0.954IDFD
Image ClusteringImageNet-10Image Size96IDFD
Image ClusteringImageNet-10NMI0.898IDFD
Image ClusteringCIFAR-10ARI0.663IDFD
Image ClusteringCIFAR-10Accuracy0.815IDFD
Image ClusteringCIFAR-10NMI0.711IDFD
Image ClusteringCIFAR-100ARI0.264IDFD
Image ClusteringCIFAR-100Accuracy0.425IDFD
Image ClusteringCIFAR-100NMI0.426IDFD
Image ClusteringSTL-10Accuracy0.756IDFD
Image ClusteringSTL-10NMI0.643IDFD
Image ClusteringImagenet-dog-15ARI0.413IDFD
Image ClusteringImagenet-dog-15Accuracy0.591IDFD
Image ClusteringImagenet-dog-15Image Size96IDFD
Image ClusteringImagenet-dog-15NMI0.546IDFD

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