Rethinking deep clustering paradigms: Self-supervision is all you need.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

The recent advances in deep clustering have been made possible by significant progress in self-supervised and pseudo-supervised learning. However, the trade-off between self-supervision and pseudo-supervision can give rise to three primary issues. The joint training causes Feature Randomness and Feature Drift, whereas the independent training causes Feature Randomness and Feature Twist. In essence, using pseudo-labels generates random and unreliable features. The combination of pseudo-supervision and self-supervision drifts the reliable clustering-oriented features. Moreover, moving from self-supervision to pseudo-supervision can twist the curved latent manifolds. This paper addresses the limitations of existing deep clustering paradigms concerning Feature Randomness, Feature Drift, and Feature Twist. We propose a new paradigm with a new strategy that replaces pseudo-supervision with a second round of self-supervision training. The new strategy makes the transition between instance-level self-supervision and neighborhood-level self-supervision smoother and less abrupt. Moreover, it prevents the drifting effect that is caused by the strong competition between instance-level self-supervision and clustering-level pseudo-supervision. Moreover, the absence of the pseudo-supervision prevents the risk of generating random features. With this novel approach, our paper introduces a Rethinking of the Deep Clustering Paradigms, denoted by R-DC. Our model is specifically designed to address three primary challenges encountered in Deep Clustering: Feature Randomness, Feature Drift, and Feature Twist. Experimental results conducted on six datasets have shown that the two-level self-supervision training yields substantial improvements, as evidenced by the results of the clustering and ablation study. Furthermore, experimental comparisons with nine state-of-the-art clustering models have clearly shown that our strategy leads to a significant enhancement in performance.

Authors

  • Amal Shaheen
    Computer Science, College of IT, UOB, Kingdom of Bahrain. Electronic address: shaheenamal@gmail.com.
  • Nairouz Mrabah
    National Engineering School of Tunis, University of Tunis El Manar, Tunis, Tunisia. Electronic address: nairouz.mrabah@ensi-uma.tn.
  • Riadh Ksantini
    Department of Computer Science, College of IT, University of Bahrain, Kingdom of Bahrain; Higher School of Communication of Tunis, University of Carthage, Tunis, Tunisia. Electronic address: rksantini@uob.edu.bh.
  • Abdulla Alqaddoumi
    Computer Science, College of IT, UOB, Kingdom of Bahrain.