Cluster Specific Representation Learning
Mahalakshmi Sabanayagam, Omar Al-Dabooni, Pascal Esser

TL;DR
This paper introduces a cluster-specific representation learning method that jointly learns representations and cluster assignments, improving the extraction of inherent data structures across various models without task-specific tuning.
Contribution
It proposes a novel, downstream-agnostic meta-algorithm for learning cluster-specific representations applicable to multiple frameworks.
Findings
Improved clustering accuracy with cluster-specific embeddings
Enhanced de-noising performance using the proposed method
Effective extraction of inherent data structures across models
Abstract
Representation learning aims to extract meaningful lower-dimensional embeddings from data, known as representations. Despite its widespread application, there is no established definition of a ``good'' representation. Typically, the representation quality is evaluated based on its performance in downstream tasks such as clustering, de-noising, etc. However, this task-specific approach has a limitation where a representation that performs well for one task may not necessarily be effective for another. This highlights the need for a more agnostic formulation, which is the focus of our work. We propose a downstream-agnostic formulation: when inherent clusters exist in the data, the representations should be specific to each cluster. Under this idea, we develop a meta-algorithm that jointly learns cluster-specific representations and cluster assignments. As our approach is easy to integrate…
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Taxonomy
TopicsFace and Expression Recognition · Advanced Clustering Algorithms Research
MethodsContrastive Learning · Focus
