Proximal Alternating Direction Network: A Globally Converged Deep Unrolling Framework

Authors

  • Risheng Liu Dalian University of Technology
  • Xin Fan Dalian University of Technology
  • Shichao Cheng Dalian University of Technology
  • Xiangyu Wang Dalian University of Technology
  • Zhongxuan Luo Dalian University of Technology

DOI:

https://doi.org/10.1609/aaai.v32i1.11523

Keywords:

Proximal alternating direction, Deep Network, Convergence, Unrolling framework

Abstract

Deep learning models have gained great success in many real-world applications. However, most existing networks are typically designed in heuristic manners, thus lack of rigorous mathematical principles and derivations. Several recent studies build deep structures by unrolling a particular optimization model that involves task information. Unfortunately, due to the dynamic nature of network parameters, their resultant deep propagation networks do not possess the nice convergence property as the original optimization scheme does. This paper provides a novel proximal unrolling framework to establish deep models by integrating experimentally verified network architectures and rich cues of the tasks. More importantly,we prove in theory that 1) the propagation generated by our unrolled deep model globally converges to a critical-point of a given variational energy, and 2) the proposed framework is still able to learn priors from training data to generate a convergent propagation even when task information is only partially available. Indeed, these theoretical results are the best we can ask for, unless stronger assumptions are enforced. Extensive experiments on various real-world applications verify the theoretical convergence and demonstrate the effectiveness of designed deep models.

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Published

2018-04-25

How to Cite

Liu, R., Fan, X., Cheng, S., Wang, X., & Luo, Z. (2018). Proximal Alternating Direction Network: A Globally Converged Deep Unrolling Framework. Proceedings of the AAAI Conference on Artificial Intelligence, 32(1). https://doi.org/10.1609/aaai.v32i1.11523

Issue

Section

AAAI Technical Track: Heuristic Search and Optimization