Baihan Lin, Guillermo Cecchi, et al.
IJCAI 2023
Spectral clustering has shown a superior performance in analyzing the cluster structure. However, its computational complexity limits its application in analyzing large-scale data. To address this problem, many low-rank matrix approximating algorithms are proposed, including the Nyström method - an approach with proven approximate error bounds. There are several algorithms that provide recipes to construct Nyström approximations with variable accuracies and computing times. This paper proposes a scalable Nyström-based clustering algorithm with a new sampling procedure, Centroid Minimum Sum of Squared Similarities (CMS3), and a heuristic on when to use it. Our heuristic depends on the eigenspectrum shape of the dataset, and yields competitive low-rank approximations in test datasets compared to the other state-of-the-art methods.
Baihan Lin, Guillermo Cecchi, et al.
IJCAI 2023
Daniel Civitarese, Daniela Szwarcman, et al.
IJCNN 2018
Baihan Lin, Djallel Bouneffouf, et al.
IJCNN 2022
Shubham Sharma, Yunfeng Zhang, et al.
AIES 2020