Balancing Strategy
Balancing strategy in machine learning and related fields focuses on mitigating undesirable imbalances in data, model performance, or resource allocation to improve fairness, accuracy, and efficiency. Current research emphasizes techniques like data augmentation (e.g., using synthetic data or oversampling), algorithmic adjustments (e.g., loss function modifications, gradient normalization, and adaptive quantization), and principled approaches to handling noisy or biased data. These efforts are crucial for addressing issues like demographic bias in face recognition, robust overfitting in adversarial training, and ensuring fair and effective resource allocation in multi-agent systems, ultimately leading to more reliable and equitable AI systems.
Papers
Balancing Test Accuracy and Security in Computerized Adaptive Testing
Wanyong Feng, Aritra Ghosh, Stephen Sireci, Andrew S. Lan
Prevention is better than cure: a case study of the abnormalities detection in the chest
Weronika Hryniewska, Piotr Czarnecki, Jakub Wiśniewski, Przemysław Bombiński, Przemysław Biecek