聚类分析
最大值和最小值
计算机科学
二部图
光谱聚类
数学优化
跳跃
水准点(测量)
奇异值分解
放松(心理学)
图形
坐标下降
算法
数学
理论计算机科学
人工智能
地理
物理
数学分析
社会心理学
量子力学
心理学
大地测量学
作者
Feiping Nie,Jingjing Xue,Rong Wang,Liang Zhang,Xuelong Li
标识
DOI:10.1109/tnnls.2022.3219131
摘要
Spectral clustering (SC) has been widely used in many applications and shows excellent performance. Its high computational cost limits its applications; many strategies including the anchor technique can partly alleviate the high computational cost problem. However, early methods ignore the fact that SC usually involves two stages: relaxation and postprocessing, i.e., it relaxes the discrete constraints to continuous constraints, and then conducts the postprocessing to get the discrete solution, which is time-consuming and deviates from directly solving the primal problem. In this article, we first adopt the bipartite graph strategy to reduce the time complexity of SC, and then an improved coordinate descent (CD) method is proposed to solve the primal problem directly without singular value decomposition (SVD) and postprocessing, i.e., directly solving the primal problem not approximately solving. Experiments on various real-world benchmark datasets show that the proposed method can get better solutions faster with better clustering performance than traditional optimization methods. Furthermore, it can jump out of local minima of traditional methods and continue to obtain better local solutions. Moreover, compared with other clustering methods, it also shows its superiority.
科研通智能强力驱动
Strongly Powered by AbleSci AI