Feature Aggregation
Feature aggregation in machine learning involves combining information from multiple feature representations to improve model performance. Current research focuses on developing novel aggregation methods, often within the context of specific model architectures like transformers and convolutional neural networks, to address challenges such as handling high-dimensional data, mitigating the effects of noise or outliers, and improving the discriminative power of learned representations. These advancements are impacting diverse fields, enhancing accuracy and efficiency in applications ranging from image recognition and video processing to speaker verification and robotic control. The overarching goal is to create more robust and informative feature representations for improved downstream task performance.
Papers
Multi-Target Federated Backdoor Attack Based on Feature Aggregation
Lingguag Hao, Kuangrong Hao, Bing Wei, Xue-song TangDonghua University●Engineering Research Center of Digitized Textile& Apparel TechnologyTrunk-branch Contrastive Network with Multi-view Deformable Aggregation for Multi-view Action Recognition
Yingyuan Yang, Guoyuan Liang, Can Wang, Xiaojun WuChinese Academy of Sciences●University of Chinese Academy of Sciences●Chinese Academy of Sciences●Harbin Institute of Technology at Shenzhen