Product Distribution
Product distribution, encompassing the analysis and modeling of data distributions across various domains, aims to improve model performance, robustness, and generalization. Current research focuses on techniques like knowledge distillation, distribution balancing, and adversarial training, often employing neural networks, diffusion models, and graph neural networks to achieve these goals. This work is significant for enhancing the reliability and efficiency of machine learning models across diverse applications, from medical image analysis and natural language processing to quantum computing and smart city development. Improved understanding and manipulation of data distributions are crucial for building more robust and equitable AI systems.
Papers
Mask Approximation Net: Merging Feature Extraction and Distribution Learning for Remote Sensing Change Captioning
Dongwei Sun, Xiangyong Cao
Assessing Pre-trained Models for Transfer Learning through Distribution of Spectral Components
Tengxue Zhang, Yang Shu, Xinyang Chen, Yifei Long, Chenjuan Guo, Bin Yang