Clustering has been one of the most basic and essential problems in
unsupervised learning due to various applications in many critical fields. The
recently proposed sum-of-nums (SON) model by Pelckmans et al. (2005), Lindsten
et al. (2011) and Hocking et al. (2011) has received a lot of attention. The
advantage of the SON model is the theoretical guarantee in terms of perfect
recovery, established by Sun et al. (2018). It also provides great
opportunities for designing efficient algorithms for solving the SON model. The
semismooth Newton based augmented Lagrangian method by Sun et al. (2018) has
demonstrated its superior performance over the alternating direction method of
multipliers (ADMM) and the alternating minimization algorithm (AMA). In this
paper, we propose a Euclidean distance matrix model based on the SON model. An
efficient majorization penalty algorithm is proposed to solve the resulting
model. Extensive numerical experiments are conducted to demonstrate the
efficiency of the proposed model and the majorization penalty algorithm.Comment: 32 pages, 3 figures, 3 table