Multi Source
Multi-source learning focuses on leveraging information from multiple datasets to improve model performance on a target task, addressing limitations of single-source training, particularly in data-scarce scenarios. Current research emphasizes efficient methods for selecting and weighting multiple sources, employing techniques like meta-learning, ensemble methods, and attention mechanisms within architectures such as graph neural networks and transformer-based models. This approach is proving valuable across diverse fields, enhancing accuracy and robustness in applications ranging from time series forecasting and text classification to medical image analysis and financial risk prediction.
Papers
Multi-source adversarial transfer learning for ultrasound image segmentation with limited similarity
Yifu Zhang, Hongru Li, Tao Yang, Rui Tao, Zhengyuan Liu, Shimeng Shi, Jiansong Zhang, Ning Ma, Wujin Feng, Zhanhu Zhang, Xinyu Zhang
Multi-source adversarial transfer learning based on similar source domains with local features
Yifu Zhang, Hongru Li, Shimeng Shi, Youqi Li, Jiansong Zhang