Dynamic Multiview Classification and Knowledge Fusion: A Fuzzy Concept-Cognitive Learning Perspective
Abstract: Recently, multiview data have grown significantly in practical scenarios. Compared with single-view data, they can comprehensively describe objects through diverse types of features. However, their inherent heterogeneity introduces new challenges for knowledge discovery, especially in dynamic environments. To effectively represent knowledge in dynamic multiview data, this article proposes a dynamic multiview concept-cognitive learning (DMVCCL) model. First, a multiview knowledge representation framework is established, which uses fuzzy three-way concepts as basic carriers. The natural hierarchical relationship between concepts is utilized to precisely represent knowledge in multiview data. Then, for dynamic multiview data, a clue-based dynamic concept updating mechanism is designed. This mechanism leverages the varying sensitivities of concepts at different granularity levels to data changes, enabling learning concepts at the optimal granularity level. Moreover, the weights of each view are assigned based on the representation capability of the learned concepts, and a multiview classification method is designed using the similarity between concepts and data. Finally, a series of comparative experiments are conducted to verify the effectiveness of the proposed method.
External IDs:dblp:journals/tfs/WangXZQD25
Loading