We consider the robust version of the classic k-center clustering problem, where we wish to remove up to z points (outliers), so as to be able to cluster the remaining points in k clusters with minimum maximum radius. We study such a problem under the fully dynamic adversarial model, where points can be inserted or deleted arbitrarily. In this setting, the main goal is to design algorithms that maintain a high quality solution at any point in time, while requiring a “small” amortized cost, i.e. a “small” number of operations per insertion or deletion, on average. In our work, we provide the first constant bi-criteria approximation algorithm for such a problem with its amortized cost being independent of both z and the size of the current input.

Hubert Chan, T. (-)H.; Lattanzi, Silvio; Sozio, Mauro; Wang, Bo. (2022). Fully Dynamic k-Center Clustering with Outliers. In Yong Zhang, Dongjing Miao, Rolf Möhring (Eds.), Computing and Combinatorics: 28th International Conference, COCOON 2022, Shenzhen, China, October 22-24, 2022, Proceedings (pp. 150-161). Springer. Isbn: 978-3-031-22104-0. Isbn: 978-3-031-22105-7. Doi: 10.1007/978-3-031-22105-7\_14.

Fully Dynamic k-Center Clustering with Outliers

Mauro Sozio;
2022

Abstract

We consider the robust version of the classic k-center clustering problem, where we wish to remove up to z points (outliers), so as to be able to cluster the remaining points in k clusters with minimum maximum radius. We study such a problem under the fully dynamic adversarial model, where points can be inserted or deleted arbitrarily. In this setting, the main goal is to design algorithms that maintain a high quality solution at any point in time, while requiring a “small” amortized cost, i.e. a “small” number of operations per insertion or deletion, on average. In our work, we provide the first constant bi-criteria approximation algorithm for such a problem with its amortized cost being independent of both z and the size of the current input.
2022
978-3-031-22104-0
978-3-031-22105-7
Clustering, Fully dynamic, Approximation algorithm
Hubert Chan, T. (-)H.; Lattanzi, Silvio; Sozio, Mauro; Wang, Bo. (2022). Fully Dynamic k-Center Clustering with Outliers. In Yong Zhang, Dongjing Miao, Rolf Möhring (Eds.), Computing and Combinatorics: 28th International Conference, COCOON 2022, Shenzhen, China, October 22-24, 2022, Proceedings (pp. 150-161). Springer. Isbn: 978-3-031-22104-0. Isbn: 978-3-031-22105-7. Doi: 10.1007/978-3-031-22105-7\_14.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11385/248147
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