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Autori principali: Ling, Huaming, Bao, Chenglong, Song, Jiebo, Shi, Zuoqiang
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.05707
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author Ling, Huaming
Bao, Chenglong
Song, Jiebo
Shi, Zuoqiang
author_facet Ling, Huaming
Bao, Chenglong
Song, Jiebo
Shi, Zuoqiang
contents In this paper, we introduce a Fast and Scalable Semi-supervised Multi-view Subspace Clustering (FSSMSC) method, a novel solution to the high computational complexity commonly found in existing approaches. FSSMSC features linear computational and space complexity relative to the size of the data. The method generates a consensus anchor graph across all views, representing each data point as a sparse linear combination of chosen landmarks. Unlike traditional methods that manage the anchor graph construction and the label propagation process separately, this paper proposes a unified optimization model that facilitates simultaneous learning of both. An effective alternating update algorithm with convergence guarantees is proposed to solve the unified optimization model. Additionally, the method employs the obtained anchor graph and landmarks' low-dimensional representations to deduce low-dimensional representations for raw data. Following this, a straightforward clustering approach is conducted on these low-dimensional representations to achieve the final clustering results. The effectiveness and efficiency of FSSMSC are validated through extensive experiments on multiple benchmark datasets of varying scales.
format Preprint
id arxiv_https___arxiv_org_abs_2408_05707
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Fast and Scalable Semi-Supervised Learning for Multi-View Subspace Clustering
Ling, Huaming
Bao, Chenglong
Song, Jiebo
Shi, Zuoqiang
Machine Learning
In this paper, we introduce a Fast and Scalable Semi-supervised Multi-view Subspace Clustering (FSSMSC) method, a novel solution to the high computational complexity commonly found in existing approaches. FSSMSC features linear computational and space complexity relative to the size of the data. The method generates a consensus anchor graph across all views, representing each data point as a sparse linear combination of chosen landmarks. Unlike traditional methods that manage the anchor graph construction and the label propagation process separately, this paper proposes a unified optimization model that facilitates simultaneous learning of both. An effective alternating update algorithm with convergence guarantees is proposed to solve the unified optimization model. Additionally, the method employs the obtained anchor graph and landmarks' low-dimensional representations to deduce low-dimensional representations for raw data. Following this, a straightforward clustering approach is conducted on these low-dimensional representations to achieve the final clustering results. The effectiveness and efficiency of FSSMSC are validated through extensive experiments on multiple benchmark datasets of varying scales.
title Fast and Scalable Semi-Supervised Learning for Multi-View Subspace Clustering
topic Machine Learning
url https://arxiv.org/abs/2408.05707