Community Recovery on Noisy Stochastic Block Models
Community Recovery on Noisy Stochastic Block Models
We study the problem of community recovery in geometrically-noised stochastic block models (SBM). This work presents two primary contributions: (1) Motif--Attention Spectral Operator (MASO), an attention-based spectral operator that improves upon traditional spectral methods; and (2) Iterative Geometric Denoising (GeoDe), a configurable denoising algorithm that boosts spectral clustering performance. We demonstrate that the fusion of GeoDe+MASO significantly outperforms existing community detection methods on noisy SBMs. Furthermore, we show that using GeoDe+MASO as a denoising step improves belief propagation's community recovery by 79.7% on the Amazon Metadata dataset.
Washieu Anan、Gwyneth Liu
计算技术、计算机技术
Washieu Anan,Gwyneth Liu.Community Recovery on Noisy Stochastic Block Models[EB/OL].(2025-05-13)[2025-06-25].https://arxiv.org/abs/2505.08251.点此复制
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