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

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Summary
This summary is machine-generated.

This study introduces a new deep clustering method (R-DC) that replaces pseudo-supervision with a second self-supervision round. This approach effectively tackles feature randomness, drift, and twist, significantly improving clustering performance.

Keywords:
Auto-encodersDeep clusteringFeature driftFeature randomnessFeature twistPseudo-supervised learningSelf-supervised learning

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Area of Science:

  • Artificial Intelligence
  • Machine Learning
  • Data Science

Background:

  • Deep clustering advances rely on self-supervised and pseudo-supervised learning.
  • Existing methods face issues like Feature Randomness, Feature Drift, and Feature Twist due to pseudo-supervision trade-offs.

Purpose of the Study:

  • To address limitations in deep clustering paradigms: Feature Randomness, Feature Drift, and Feature Twist.
  • To propose a novel deep clustering approach, Rethinking of the Deep Clustering Paradigms (R-DC).

Main Methods:

  • Replaced pseudo-supervision with a second round of self-supervision training.
  • Implemented a smoother transition between instance-level and neighborhood-level self-supervision.
  • Eliminated pseudo-supervision to prevent random feature generation and mitigate feature drift.

Main Results:

  • The two-level self-supervision training demonstrated substantial improvements in clustering performance.
  • Ablation studies confirmed the effectiveness of the proposed strategy.
  • Experimental comparisons showed significant performance enhancement over nine state-of-the-art clustering models.

Conclusions:

  • The proposed R-DC model effectively mitigates Feature Randomness, Feature Drift, and Feature Twist in deep clustering.
  • Replacing pseudo-supervision with a second self-supervision round offers a more robust and reliable deep clustering paradigm.