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Nonconvex Sparse Spectral Clustering by Alternating Direction Method of Multipliers and Its Convergence Analysis

机译:通过乘法器交替方向方法的非耦合稀疏谱聚类及其收敛分析

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Spectral Clustering (SC) is a widely used data clustering method which first learns a low-dimensional embedding U of data by computing the eigenvectors of the normalized Laplacian matrix, and then performs k-means on U~T to get the final clustering result. The Sparse Spectral Clustering (SSC) method extends SC with a sparse regularization on UU~T by using the block diagonal structure prior of UU~T in the ideal case. However, encouraging UU~T to be sparse leads to a heavily nonconvex problem which is challenging to solve and the work (Lu, Yan, and Lin 2016) proposes a convex relaxation in the pursuit of this aim indirectly. However, the convex relaxation generally leads to a loose approximation and the quality of the solution is not clear. This work instead considers to solve the nonconvex formulation of SSC which directly encourages UU~T to be sparse. We propose an efficient Alternating Direction Method of Multipliers (ADMM) to solve the nonconvex SSC and provide the convergence guarantee. In particular, we prove that the sequences generated by ADMM always exist a limit point and any limit point is a stationary point. Our analysis does not impose any assumptions on the iterates and thus is practical. Our proposed ADMM for nonconvex problems allows the stepsize to be increasing but upper bounded, and this makes it very efficient in practice. Experimental analysis on several real data sets verifies the effectiveness of our method.
机译:光谱簇(SC)是一种广泛使用的数据聚类方法,首先通过计算归一化Laplacian矩阵的特征向量来学习数据的低维嵌入U,然后对U〜T执行k-means以获得最终的聚类结果。稀疏光谱聚类(SSC)方法通过在理想情况下使用UU〜T之前的块对角线结构,在UU〜T上延伸了稀疏正则化。然而,鼓励uu〜t稀疏导致一个严重的非膨胀问题,这是解决解决和工作(Lu,Yan和Lin 2016)的挑战,提出了间接追求这一目标的凸松弛。然而,凸弛豫通常导致松散的近似,溶液的质量尚不清楚。这项工作改为旨在解决SSC的非耦合配方,它直接鼓励UU〜T稀疏。我们提出了一种高效的交替方向方法,乘法器(ADMM)来解决非凸版SSC并提供收敛保证。特别是,我们证明,ADMM生成的序列总是存在限制点,并且任何限制点都是静止点。我们的分析并未对迭代的任何假设产生任何假设,因此是实际的。我们拟议的非谐波问题的ADMM允许步骤化增加但上限,这使得实际上非常有效。关于若干真实数据集的实验分析验证了我们方法的有效性。

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