CDC: A Simple Framework for Complex Data Clustering

In today's digital era driven by data, the amount and complexity of the collected data, such as multiview, non-Euclidean, and multirelational, are growing exponentially or even faster. Clustering, which unsupervisedly extracts valid knowledge from data, is extremely useful in practice. However,...

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Vydáno v:IEEE transaction on neural networks and learning systems Ročník 36; číslo 7; s. 13177 - 13188
Hlavní autoři: Kang, Zhao, Xie, Xuanting, Li, Bingheng, Pan, Erlin
Médium: Journal Article
Jazyk:angličtina
Vydáno: United States IEEE 01.07.2025
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ISSN:2162-237X, 2162-2388, 2162-2388
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Shrnutí:In today's digital era driven by data, the amount and complexity of the collected data, such as multiview, non-Euclidean, and multirelational, are growing exponentially or even faster. Clustering, which unsupervisedly extracts valid knowledge from data, is extremely useful in practice. However, existing methods are independently developed to handle one particular challenge at the expense of the others. In this work, we propose a simple but effective framework for complex data clustering (CDC) that can efficiently process different types of data with linear complexity. We first use graph filtering (GF) to fuse geometric structure and attribute information. We then reduce complexity with high-quality anchors that are adaptively learned via a novel similarity-preserving (SP) regularizer. We illustrate the cluster-ability of our proposed method theoretically and experimentally. In particular, we deploy CDC to graph data of size 111 M.
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ISSN:2162-237X
2162-2388
2162-2388
DOI:10.1109/TNNLS.2024.3473618