View-Adaptive Multi-Granularity Anchor Learning for Multi-View Clustering

Multi-view clustering (MVC) based on anchor learning has been proven to be effective in improving clustering accuracy and efficiency. Existing MVC methods are mainly based on single-granularity anchor learning, that is, the number of anchors corresponding to different views is constant and consistent, which will lead to information redundancy or insufficient mining. In addition, aggregating anchors of varying scales from all views to obtain multi-view shared clustering results remains a problem