Toward Efficient and Incremental Spectral Clustering via Parametric Spectral Clustering
November 14, 2023 ยท Entered Twilight ยท ๐ BigData Congress [Services Society]
Repo contents: Datasets_Experiment, PSC_Image_Train.py, PSC_Tabular_Train.py, README.md, SC_Image_Train.py, SC_PSC_Image_Cmp.py, SC_PSC_Tabular_Cmp.py, SC_Tabular_Train.py, requirements.txt
Authors
Jo-Chun Chen, Hung-Hsuan Chen
arXiv ID
2311.07833
Category
cs.LG: Machine Learning
Citations
2
Venue
BigData Congress [Services Society]
Repository
https://github.com/109502518/PSC_BigData
โญ 18
Last Checked
3 months ago
Abstract
Spectral clustering is a popular method for effectively clustering nonlinearly separable data. However, computational limitations, memory requirements, and the inability to perform incremental learning challenge its widespread application. To overcome these limitations, this paper introduces a novel approach called parametric spectral clustering (PSC). By extending the capabilities of spectral clustering, PSC addresses the challenges associated with big data and real-time scenarios and enables efficient incremental clustering with new data points. Experimental evaluations conducted on various open datasets demonstrate the superiority of PSC in terms of computational efficiency while achieving clustering quality mostly comparable to standard spectral clustering. The proposed approach has significant potential for incremental and real-time data analysis applications, facilitating timely and accurate clustering in dynamic and evolving datasets. The findings of this research contribute to the advancement of clustering techniques and open new avenues for efficient and effective data analysis. We publish the experimental code at https://github.com/109502518/PSC_BigData.
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