Multi Stage
Multi-stage approaches are increasingly prevalent in machine learning, aiming to improve model performance and efficiency by breaking down complex tasks into sequential sub-tasks. Current research focuses on leveraging this strategy across diverse applications, employing architectures like two-stage neural networks, incorporating techniques such as retrieval augmentation and contrastive learning, and utilizing pre-trained models for transfer learning. This methodology offers significant advantages in handling high-dimensional data, mitigating computational costs, and enhancing accuracy, particularly in resource-constrained or low-data scenarios, with impacts spanning fields from image processing and natural language processing to medical diagnosis and robotic manipulation.
Papers
Hybrid Retrieval and Multi-stage Text Ranking Solution at TREC 2022 Deep Learning Track
Guangwei Xu, Yangzhao Zhang, Longhui Zhang, Dingkun Long, Pengjun Xie, Ruijie Guo
Multi-stage Factorized Spatio-Temporal Representation for RGB-D Action and Gesture Recognition
Yujun Ma, Benjia Zhou, Ruili Wang, Pichao Wang