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Deep $k$-Means: Jointly clustering with $k$-Means and learning representations

About

We study in this paper the problem of jointly clustering and learning representations. As several previous studies have shown, learning representations that are both faithful to the data to be clustered and adapted to the clustering algorithm can lead to better clustering performance, all the more so that the two tasks are performed jointly. We propose here such an approach for $k$-Means clustering based on a continuous reparametrization of the objective function that leads to a truly joint solution. The behavior of our approach is illustrated on various datasets showing its efficacy in learning representations for objects while clustering them.

Maziar Moradi Fard, Thibaut Thonet, Eric Gaussier• 2018

Related benchmarks

TaskDatasetResultRank
ClusteringMNIST
NMI0.796
113
ClusteringUSPS
NMI77.6
104
ClusteringAll of Us EHR (Combined cohort)
Accuracy (ACC)65.5
14
ClusteringAll of Us EHR (Male cohort)
Accuracy65.5
14
ClusteringAll of Us EHR (Female cohort)
Accuracy65.4
14
Unsupervised Clustering20News
Accuracy51.2
10
Unsupervised ClusteringRCV1-10K
ACC58.3
10
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