4.8 Article

SimpleMKKM: Simple Multiple Kernel K-Means

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2022.3198638

关键词

Kernel; Optimization; Clustering algorithms; Minimization; Partitioning algorithms; Linear programming; Task analysis; Multi-view clustering; multiple kernel clustering; kernel alignment maximization

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In this paper, we propose a simple yet effective multiple kernel clustering algorithm called SimpleMKKM. The algorithm extends the supervised kernel alignment criterion to multi-kernel clustering and solves an intractable minimization-maximization problem to obtain the clustering results. The experimental study demonstrates that SimpleMKKM outperforms state-of-the-art multiple kernel clustering alternatives in terms of clustering accuracy, formulation and optimization advantages, and other aspects.
We propose a simple yet effective multiple kernel clustering algorithm, termed simple multiple kernel k-means (SimpleMKKM). It extends the widely used supervised kernel alignment criterion to multi-kernel clustering. Our criterion is given by an intractable minimization-maximization problem in the kernel coefficient and clustering partition matrix. To optimize it, we equivalently rewrite the minimization-maximization formulation as a minimization of an optimal value function, prove its differenentiablity, and design a reduced gradient descent algorithm to decrease it. Furthermore, we prove that the resultant solution of SimpleMKKM is the global optimum. We theoretically analyze the performance of SimpleMKKM in terms of its clustering generalization error. After that, we develop extensive experiments to investigate the proposed SimpleMKKM from the perspectives of clustering accuracy, advantage on the formulation and optimization, variation of the learned consensus clustering matrix with iterations, clustering performance with varied number of samples and base kernels, analysis of the learned kernel weight, the running time and the global convergence. The experimental study demonstrates the effectiveness of the proposed SimpleMKKM by considerably and consistently outperforming state of the art multiple kernel clustering alternatives. In addition, the ablation study shows that the improved clustering performance is contributed by both the novel formulation and new optimization. Our work provides a more effective approach to integrate multi-view data for clustering, and this could trigger novel research on multiple kernel clustering. The source code and data for SimpleMKKM are available at https://github.com/xinwangliu/SimpleMKKMcodes/.

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