Balanced Approach
"Balanced approach" in machine learning research addresses the pervasive issue of data imbalance, where some classes or modalities are significantly under-represented compared to others. Current research focuses on developing methods to mitigate this imbalance, employing techniques like data augmentation, weighted loss functions, and novel model architectures such as balanced graph learning and multi-modal cosine loss, to improve model performance and generalization. This work is crucial for enhancing the fairness and reliability of machine learning models across diverse applications, from medical image analysis and natural language processing to fraud detection and motion capture.
Papers
June 8, 2022
May 27, 2022
February 17, 2022
February 1, 2022
January 30, 2022
January 13, 2022