Efficient Hybrid
Hybrid approaches in various scientific fields aim to combine the strengths of different methods, leveraging complementary advantages to overcome individual limitations. Current research focuses on integrating deep learning models with classical techniques (e.g., physics-based models, HMMs), exploring novel architectures like hybrid transformers and employing ensemble methods to improve robustness and accuracy. These hybrid strategies are proving valuable across diverse applications, from accelerating large language model training and enhancing medical image analysis to improving autonomous robot navigation and enabling more efficient and accurate predictions in complex systems.
Papers
Hybrid deep learning and physics-based neural network for programmable illumination computational microscopy
Ruiqing Sun, Delong Yang, Shaohui Zhang, Qun Hao
Hybrid of DiffStride and Spectral Pooling in Convolutional Neural Networks
Sulthan Rafif, Mochamad Arfan Ravy Wahyu Pratama, Mohammad Faris Azhar, Ahmad Mustafidul Ibad, Lailil Muflikhah, Novanto Yudistira