A Bridging Framework for Model Optimization and Deep Propagation
Liu, Risheng, Cheng, Shichao, liu, xiaokun, Ma, Long, Fan, Xin, Luo, Zhongxuan
–Neural Information Processing Systems
Optimizing task-related mathematical model is one of the most fundamental methodologies in statistic and learning areas. However, generally designed schematic iterations may hard to investigate complex data distributions in real-world applications. Recently, training deep propagations (i.e., networks) has gained promising performance in some particular tasks. Unfortunately, existing networks are often built in heuristic manners, thus lack of principled interpretations and solid theoretical supports. In this work, we provide a new paradigm, named Propagation and Optimization based Deep Model (PODM), to bridge the gaps between these different mechanisms (i.e., model optimization and deep propagation).
Neural Information Processing Systems
Feb-14-2020, 14:27:51 GMT
- Technology: