Anchor Graph
Anchor graph methods represent a powerful approach to clustering and data analysis, particularly for large-scale datasets, by focusing on a subset of representative "anchor" points to efficiently capture data structure. Current research emphasizes improving anchor selection and graph construction, often integrating these techniques with transformer networks, tensor factorization, and various attention mechanisms to enhance performance and scalability across diverse applications like multi-view clustering, object detection, and semantic segmentation. This work is significant for its potential to improve efficiency and accuracy in handling complex, high-dimensional data, leading to advancements in fields ranging from computer vision and natural language processing to causal inference and climate science.
Papers
Efficient Multi-View Graph Clustering with Local and Global Structure Preservation
Yi Wen, Suyuan Liu, Xinhang Wan, Siwei Wang, Ke Liang, Xinwang Liu, Xihong Yang, Pei Zhang
Scalable Incomplete Multi-View Clustering with Structure Alignment
Yi Wen, Siwei Wang, Ke Liang, Weixuan Liang, Xinhang Wan, Xinwang Liu, Suyuan Liu, Jiyuan Liu, En Zhu