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Deep Clustering with Associative Memories

About

Deep clustering - joint representation learning and latent space clustering - is a well studied problem especially in computer vision and text processing under the deep learning framework. While the representation learning is generally differentiable, clustering is an inherently discrete optimization task, requiring various approximations and regularizations to fit in a standard differentiable pipeline. This leads to a somewhat disjointed representation learning and clustering. In this work, we propose a novel loss function utilizing energy-based dynamics via Associative Memories to formulate a new deep clustering method, DCAM, which ties together the representation learning and clustering aspects more intricately in a single objective. Our experiments showcase the advantage of DCAM, producing improved clustering quality for various architecture choices (convolutional, residual or fully-connected) and data modalities (images or text).

Bishwajit Saha, Dmitry Krotov, Mohammed J. Zaki, Parikshit Ram• 2026

Related benchmarks

TaskDatasetResultRank
Image ClusteringCIFAR-10
NMI0.697
243
ClusteringCIFAR-10 (test)--
184
ClusteringSTL-10 (test)--
146
ClusteringCIFAR-100 (test)--
110
Deep ClusteringFashion MNIST (test)
SC0.922
28
Deep ClusteringCIFAR-100
SC0.921
21
Deep ClusteringSTL-10
SC0.923
19
ClusteringUSPS (test)--
19
Deep ClusteringCIFAR-10
SC0.863
18
ClusteringFashion-MNIST standard (test)
ARI48.6
17
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