Multiple kernel subspace clustering with local structural graph and low-rank consensus kernel learning

作者:

Highlights:

摘要

Multiple kernel learning (MKL) methods are generally believed to perform better than single kernel learning (SKL) methods in handling nonlinear subspace clustering problem, largely thanks to MKL avoids selecting and tuning a pre-defined kernel. However, previous MKL methods mainly focused on how to define a kernel weighting strategy, but ignored the structural characteristics of the input data in both the original space and the kernel space. In this paper, we first propose a novel graph-based MKL method for subspace clustering, namely, Local Structural Graph and Low-Rank Consensus Multiple Kernel Learning (LLMKL). It jointly learns an optimal affinity graph and a suitable consensus kernel for clustering purpose by elegantly integrating the MKL technology, the global structure in the kernel space, the local structure in the original space, and the Hilbert space self-expressiveness property in a unified optimization model. In particular, to capture the data global structure, we employ a substitute of the desired consensus kernel, and then introduce a low-rank constraint on the substitute to encourage that the structure of linear subspaces is present in the feature space. Moreover, the data local structure is explored by building a complete graph, where each sample is treated as a node, and an edge codes the pairwise affinity between two samples. By such, the consensus kernel learning and the affinity graph learning can promote each other such that the data in resulting Hilbert space are both self-expressive and low-rank. Experiments on both image and text clustering well demonstrate that LLMKL outperforms the state-of-the-art methods.

论文关键词:Multiple kernel learning,Subspace clustering,Self-expressiveness,Structure learning,Low-rank kernel

论文评审过程:Received 21 April 2019, Revised 11 August 2019, Accepted 12 September 2019, Available online 14 September 2019, Version of Record 20 January 2020.

论文官网地址:https://doi.org/10.1016/j.knosys.2019.105040