MLCVLGIVJun 2, 2018

Optimal Clustering under Uncertainty

arXiv:1806.00672v15 citations
Originality Incremental advance
AI Analysis

This work addresses the need for robust clustering methods in scenarios with uncertain point processes, such as granular imaging, but is incremental as it extends existing probabilistic frameworks.

The paper tackles the problem of clustering under uncertainty by deriving an optimal robust clusterer that minimizes misclustered points, analogous to robust classification, and demonstrates its performance in synthetic Gaussian models and granular imaging applications.

Classical clustering algorithms typically either lack an underlying probability framework to make them predictive or focus on parameter estimation rather than defining and minimizing a notion of error. Recent work addresses these issues by developing a probabilistic framework based on the theory of random labeled point processes and characterizing a Bayes clusterer that minimizes the number of misclustered points. The Bayes clusterer is analogous to the Bayes classifier. Whereas determining a Bayes classifier requires full knowledge of the feature-label distribution, deriving a Bayes clusterer requires full knowledge of the point process. When uncertain of the point process, one would like to find a robust clusterer that is optimal over the uncertainty, just as one may find optimal robust classifiers with uncertain feature-label distributions. Herein, we derive an optimal robust clusterer by first finding an effective random point process that incorporates all randomness within its own probabilistic structure and from which a Bayes clusterer can be derived that provides an optimal robust clusterer relative to the uncertainty. This is analogous to the use of effective class-conditional distributions in robust classification. After evaluating the performance of robust clusterers in synthetic mixtures of Gaussians models, we apply the framework to granular imaging, where we make use of the asymptotic granulometric moment theory for granular images to relate robust clustering theory to the application.

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