Seed Area
Seed selection, or seeding, is a crucial preprocessing step in numerous machine learning algorithms and applications, impacting model performance and efficiency. Current research focuses on optimizing seed selection strategies across diverse domains, including image generation, semantic segmentation, and clustering, often employing techniques like contrastive learning, subspace learning, and evolutionary algorithms to improve seed quality and reduce computational costs. These advancements are significant because effective seeding can lead to more accurate, efficient, and fair algorithms, with applications ranging from improving medical image analysis to enhancing targeted advertising campaigns.
Papers
July 6, 2022