层次优化派生学习

IF 20.8 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Risheng Liu, Xuan Liu, Shangzhi Zeng, Jin Zhang, Yixuan Zhang
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引用次数: 1

摘要

近年来,通过利用优化技术来制定深度模型的传播,提出了各种所谓的优化衍生学习(ODL)方法来解决各种学习和视觉任务。现有的ODL方法虽然取得了比较满意的实际性能,但仍然存在一些根本性的问题。特别是,当前的ODL方法倾向于将模型构建和学习视为两个独立的阶段,因此无法表述它们的底层耦合和依赖关系。在这项工作中,我们首先建立了一个新的框架,称为层次ODL (HODL),同时研究了优化衍生模型构建的内在行为及其相应的学习过程。然后从逼近性和平稳性两方面严格证明了这两个子任务的联合收敛性。据我们所知,这是这两个耦合ODL组件的第一个理论保证:优化和学习。通过将HODL应用于具有挑战性的学习任务,我们进一步展示了框架的灵活性,现有的ODL方法还没有适当地解决这些任务。最后,我们在视觉和其他学习任务中进行了大量的合成数据和实际应用实验,以验证HODL在各种应用场景下的理论特性和实际性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hierarchical Optimization-Derived Learning
In recent years, by utilizing optimization techniques to formulate the propagation of deep model, a variety of so-called Optimization-Derived Learning (ODL) approaches have been proposed to address diverse learning and vision tasks. Although having achieved relatively satisfying practical performance, there still exist fundamental issues in existing ODL methods. In particular, current ODL methods tend to consider model constructing and learning as two separate phases, and thus fail to formulate their underlying coupling and depending relationship. In this work, we first establish a new framework, named Hierarchical ODL (HODL), to simultaneously investigate the intrinsic behaviors of optimization-derived model construction and its corresponding learning process. Then we rigorously prove the joint convergence of these two sub-tasks, from the perspectives of both approximation quality and stationary analysis. To our best knowledge, this is the first theoretical guarantee for these two coupled ODL components: optimization and learning. We further demonstrate the flexibility of our framework by applying HODL to challenging learning tasks, which have not been properly addressed by existing ODL methods. Finally, we conduct extensive experiments on both synthetic data and real applications in vision and other learning tasks to verify the theoretical properties and practical performance of HODL in various application scenarios.
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来源期刊
CiteScore
28.40
自引率
3.00%
发文量
885
审稿时长
8.5 months
期刊介绍: The IEEE Transactions on Pattern Analysis and Machine Intelligence publishes articles on all traditional areas of computer vision and image understanding, all traditional areas of pattern analysis and recognition, and selected areas of machine intelligence, with a particular emphasis on machine learning for pattern analysis. Areas such as techniques for visual search, document and handwriting analysis, medical image analysis, video and image sequence analysis, content-based retrieval of image and video, face and gesture recognition and relevant specialized hardware and/or software architectures are also covered.
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