Dokumentdetails
ID

oai:arXiv.org:2409.04698

Thema
Computer Science - Machine Learnin...
Autor
Chen, Jie Mao, Hua Gou, Yuanbiao Peng, Xi
Kategorie

Computer Science

Jahr

2024

Auflistungsdatum

11.09.2024

Schlüsselwörter
stream algorithms landmark microclusters streams hsrc objects high-dimensional data clustering
Metrisch

Zusammenfassung

Data stream clustering reveals patterns within continuously arriving, potentially unbounded data sequences.

Numerous data stream algorithms have been proposed to cluster data streams.

The existing data stream clustering algorithms still face significant challenges when addressing high-dimensional data streams.

First, it is intractable to measure the similarities among high-dimensional data objects via Euclidean distances when constructing and merging microclusters.

Second, these algorithms are highly sensitive to the noise contained in high-dimensional data streams.

In this paper, we propose a hierarchical sparse representation clustering (HSRC) method for clustering high-dimensional data streams.

HSRC first employs an $l_1$-minimization technique to learn an affinity matrix for data objects in individual landmark windows with fixed sizes, where the number of neighboring data objects is automatically selected.

This approach ensures that highly correlated data samples within clusters are grouped together.

Then, HSRC applies a spectral clustering technique to the affinity matrix to generate microclusters.

These microclusters are subsequently merged into macroclusters based on their sparse similarity degrees (SSDs).

Additionally, HSRC introduces sparsity residual values (SRVs) to adaptively select representative data objects from the current landmark window.

These representatives serve as dictionary samples for the next landmark window.

Finally, HSRC refines each macrocluster through fine-tuning.

In particular, HSRC enables the detection of outliers in high-dimensional data streams via the associated SRVs.

The experimental results obtained on several benchmark datasets demonstrate the effectiveness and robustness of HSRC.

;Comment: 11 pages, 6 figures

Chen, Jie,Mao, Hua,Gou, Yuanbiao,Peng, Xi, 2024, Hierarchical Sparse Representation Clustering for High-Dimensional Data Streams

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