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A Framework for Deep Constrained Clustering -- Algorithms and Advances

About

The area of constrained clustering has been extensively explored by researchers and used by practitioners. Constrained clustering formulations exist for popular algorithms such as k-means, mixture models, and spectral clustering but have several limitations. A fundamental strength of deep learning is its flexibility, and here we explore a deep learning framework for constrained clustering and in particular explore how it can extend the field of constrained clustering. We show that our framework can not only handle standard together/apart constraints (without the well documented negative effects reported earlier) generated from labeled side information but more complex constraints generated from new types of side information such as continuous values and high-level domain knowledge.

Hongjing Zhang, Sugato Basu, Ian Davidson• 2019

Related benchmarks

TaskDatasetResultRank
ClusteringSTL-10 (test)
Accuracy81.6
146
ClusteringMNIST (test)
NMI0.918
122
ClusteringFashion-MNIST standard (test)
ARI52.3
17
ClusteringReuters (test)
Accuracy0.947
5
Clustering (Preterm)Heart echo cardiogram 305 infant videos (20000 individual frames)
Accuracy69.6
5
Clustering (View)Heart echo cardiogram infant
Accuracy55.1
5
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