Deep Clustering With Consensus Representations
Lukas Miklautz, Martin Teuffenbach, Pascal Weber, Rona Perjuci, Walid, Durani, Christian B\"ohm, Claudia Plant

TL;DR
This paper introduces DECCS, a novel deep clustering method that learns a consensus representation to integrate multiple heterogeneous clustering algorithms, improving clustering performance by maximizing their agreement.
Contribution
The paper presents the first deep clustering approach that jointly learns a consensus representation from multiple heterogeneous clustering algorithms.
Findings
DECCS outperforms several baseline methods in experiments.
Learning consensus representations enhances clustering agreement.
DECCS effectively integrates diverse clustering algorithms.
Abstract
The field of deep clustering combines deep learning and clustering to learn representations that improve both the learned representation and the performance of the considered clustering method. Most existing deep clustering methods are designed for a single clustering method, e.g., k-means, spectral clustering, or Gaussian mixture models, but it is well known that no clustering algorithm works best in all circumstances. Consensus clustering tries to alleviate the individual weaknesses of clustering algorithms by building a consensus between members of a clustering ensemble. Currently, there is no deep clustering method that can include multiple heterogeneous clustering algorithms in an ensemble to update representations and clusterings together. To close this gap, we introduce the idea of a consensus representation that maximizes the agreement between ensemble members. Further, we…
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Taxonomy
TopicsAdvanced Clustering Algorithms Research · Complex Network Analysis Techniques · Face and Expression Recognition
