An efficient network clustering approach using graph-boosting and nonnegative matrix factorization

IF 10.7 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence Review Pub Date : 2024-09-16 DOI:10.1007/s10462-024-10912-1
Ji Tang, Xiaoru Xu, Teng Wang, Amin Rezaeipanah
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Abstract

Network clustering is a critical task in data analysis, aimed at uncovering the underlying structure and patterns within complex networks. Traditional clustering methods often struggle with large-scale and noisy data, leading to suboptimal results. Also, the efficiency of positive samples in network clustering depends on the carefully constructed data augmentation, and the pre-training process of the model deals with large-scale data. To address these issues, in this paper, we introduce an efficient network clustering approach that leverages Graph-Boosting and Nonnegative Matrix Factorization to enhance clustering performance (GBNMF). Our algorithm addresses the limitations of traditional clustering techniques by incorporating the strengths of graph-boosting, which iteratively improves the quality of clusters, and Nonnegative Matrix Factorization (NMF), which effectively captures latent structures within the data. We validate our algorithm through extensive experiments on various benchmark network datasets, demonstrating significant improvements in clustering accuracy and robustness. The proposed algorithm not only achieves superior clustering results but also exhibits remarkable computational efficiency, making it a valuable tool for large-scale network analysis applications.

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利用图增强和非负矩阵因式分解的高效网络聚类方法
网络聚类是数据分析中的一项重要任务,旨在揭示复杂网络中的潜在结构和模式。传统的聚类方法往往难以处理大规模和高噪声数据,导致结果不理想。同时,网络聚类中正向样本的效率取决于精心构建的数据增强,以及模型处理大规模数据的预训练过程。为了解决这些问题,我们在本文中介绍了一种高效的网络聚类方法,它利用图形提升和非负矩阵因式分解(GBNMF)来提高聚类性能。我们的算法结合了图增强(Graph-Boosting)和非负矩阵因式分解(Nonnegative Matrix Factorization,NMF)的优势,前者可以迭代改进聚类的质量,后者可以有效捕捉数据中的潜在结构,从而解决了传统聚类技术的局限性。我们在各种基准网络数据集上进行了大量实验,验证了我们的算法,证明其在聚类准确性和鲁棒性方面都有显著提高。所提出的算法不仅实现了卓越的聚类结果,还表现出显著的计算效率,使其成为大规模网络分析应用的重要工具。
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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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