Multiple View
Multiple view analysis focuses on integrating information from diverse perspectives to improve model performance and understanding in various domains. Current research emphasizes developing methods to effectively fuse data from multiple viewpoints, using architectures like transformers and generative adversarial networks, and employing techniques such as contrastive learning and multi-view mixture-of-experts models. This approach is proving valuable in diverse applications, including object recognition, scene understanding, and personalized recommendations, by leveraging the complementary information inherent in multiple data sources to overcome limitations of single-view approaches. The resulting improvements in accuracy, robustness, and interpretability are driving significant advancements across multiple scientific fields.
Papers
A Survey on Benchmarks of Multimodal Large Language Models
Jian Li, Weiheng Lu, Hao Fei, Meng Luo, Ming Dai, Min Xia, Yizhang Jin, Zhenye Gan, Ding Qi, Chaoyou Fu, Ying Tai, Wankou Yang, Yabiao Wang, Chengjie Wang
Integrating Multi-view Analysis: Multi-view Mixture-of-Expert for Textual Personality Detection
Haohao Zhu, Xiaokun Zhang, Junyu Lu, Liang Yang, Hongfei Lin