Graph-based Clustering Revisited: A Relaxation of Kernel k-Means Perspective

Wenlong Lyu, Yuheng Jia, Hui Liu, Junhui Hou.

Year: 2026, Volume: 27, Issue: 131, Pages: 1−44


Abstract

The well-known graph-based clustering methods, including spectral clustering, symmetric non-negative matrix factorization, and doubly stochastic normalization, can be viewed as relaxations of the kernel k-means approach. However, we posit that these methods excessively relax their inherent low-rank, nonnegative, doubly stochastic, and orthonormal constraints to ensure numerical feasibility, potentially limiting their clustering efficacy. In this paper, guided by our systematic theoretical analyses, we propose Low-Rank Doubly stochastic clustering (LoRD), a model that only relaxes the orthonormal constraint to derive a probabilistic clustering results. Furthermore, by theoretically establishing the equivalence between orthogonality and Block diagonality under the doubly stochastic constraint, we propose B-LoRD. By integrating block diagonal regularization into LoRD, expressed as the maximization of the Frobenius norm, we enhance clustering performance. To ensure numerical solvability, we transform the non-convex doubly stochastic constraint into a linear convex constraint through the introduction of a class probability parameter. The theoretical demonstration of the gradient Lipschitz continuity of our LoRD and B-LoRD enables the proposal of a projected gradient algorithm whose exact iteration admits a sublinear convergence-rate bound and ensures first-order stationarity of every accumulation point for the exact projected gradient iteration. Extensive experiments underscore the effectiveness of our approaches. The code is publicly available at https://github.com/lwl-learning/LoRD.

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