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Clustering by Nonnegative Matrix Factorization Using Graph Random Walk

机译:图随机游走的非负矩阵分解聚类

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Nonnegative Matrix Factorization (NMF) is a promising relaxation technique for clustering analysis. However, conventional NMF methods that directly approximate the pairwise similarities using the least square error often yield mediocre performance for data in curved manifolds because they can capture only the immediate similarities between data samples. Here we propose a new NMF clustering method which replaces the approximated matrix with its smoothed version using random walk. Our method can thus accommodate farther relationships between data samples. Furthermore, we introduce a novel regularization in the proposed objective function in order to improve over spectral clustering. The new learning objective is optimized by a multiplicative Majorization-Minimization algorithm with a scalable implementation for learning the factorizing matrix. Extensive experimental results on real-world datasets show that our method has strong performance in terms of cluster purity.
机译:非负矩阵分解(NMF)是用于聚类分析的有希望的松弛技术。但是,使用最小二乘误差直接逼近成对相似性的常规NMF方法通常对弯曲流形中的数据产生中等的性能,因为它们只能捕获数据样本之间的直接相似性。在这里,我们提出了一种新的NMF聚类方法,该方法使用随机游走将近似矩阵替换为其平滑版本。因此,我们的方法可以适应数据样本之间的进一步关系。此外,我们在提出的目标函数中引入了一种新颖的正则化方法,以改善频谱聚类。新的学习目标通过具有可扩展性的可乘式实现的乘法专业化-最小化算法进行优化,以学习因式分解矩阵。在真实数据集上的大量实验结果表明,我们的方法在簇纯度方面具有很强的性能。

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