A Decentralized Framework for Kernel PCA With Projection Consensus Constraints

Fan He;Ruikai Yang;Lei Shi;Xiaolin Huang
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Abstract

This paper studies kernel PCA in a decentralized setting, where data are distributively observed with full features in local nodes, and a fusion center is prohibited. Compared with linear PCA, the use of kernel brings challenges to the design of decentralized consensus optimization: the local projection directions are data-dependent. As a result, the consensus constraint in distributed linear PCA is no longer valid. To overcome this problem, we propose a projection consensus constraint and obtain an effective decentralized consensus framework, where local solutions are expected to be the projection of the global solution on the column space of the local dataset. We also derive a fully non-parametric, fast, and convergent algorithm based on the alternative direction method of multiplier, of which each iteration is analytic and communication-efficient. Experiments on a truly parallel architecture are conducted on real-world data, showing that the proposed decentralized algorithm is effective in utilizing information from other nodes and takes great advantages in running time over the central kernel PCA.
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具有投影一致性约束的核主成分分析的去中心化框架
本文研究了分散环境下的核主成分分析,在这种情况下,数据在局部节点上以全特征分布地观察,并且不允许存在融合中心。与线性主成分分析相比,核的使用给分散共识优化的设计带来了挑战:局部投影方向依赖于数据。因此,分布式线性主成分分析中的一致性约束不再有效。为了克服这个问题,我们提出了一个投影共识约束,并获得了一个有效的去中心化共识框架,其中局部解被期望为全局解在局部数据集的列空间上的投影。基于乘法器的替代方向法,推导出一种完全非参数、快速、收敛的算法,该算法的每次迭代都具有解析性和通信效率。在真正的并行架构下对真实数据进行了实验,结果表明所提出的分散算法能够有效地利用其他节点的信息,并且在运行时间上比中心核PCA有很大的优势。
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