Interpretable label-free self-guided subspace clustering
Ivica Kopriva

TL;DR
This paper introduces a label-independent hyperparameter optimization method for subspace clustering that uses clustering quality metrics on pseudo-labels, enabling effective tuning without labeled data.
Contribution
It proposes a novel, interpretable approach to hyperparameter tuning for subspace clustering using smoothness assumptions of quality metrics, applicable across various algorithms and datasets.
Findings
Achieves 5-7% performance close to oracle versions.
Works across multiple subspace clustering algorithms.
Provides visualizations for interpretability and hyperparameter space selection.
Abstract
Majority subspace clustering (SC) algorithms depend on one or more hyperparameters that need to be carefully tuned for the SC algorithms to achieve high clustering performance. Hyperparameter optimization (HPO) is often performed using grid-search, assuming that some labeled data is available. In some domains, such as medicine, this assumption does not hold true in many cases. One avenue of research focuses on developing SC algorithms that are inherently free of hyperparameters. For hyperparameters-dependent SC algorithms, one approach to label-independent HPO tuning is based on internal clustering quality metrics (if available), whose performance should ideally match that of external (label-dependent) clustering quality metrics. In this paper, we propose a novel approach to label-independent HPO that uses clustering quality metrics, such as accuracy (ACC) or normalized mutual…
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Taxonomy
TopicsText and Document Classification Technologies
MethodsHyper-parameter optimization
