Controlled learning of pointwise nonlinearities in neural-network-like architectures

IF 3.2 2区 数学 Q1 MATHEMATICS, APPLIED Applied and Computational Harmonic Analysis Pub Date : 2025-03-25 DOI:10.1016/j.acha.2025.101764
Michael Unser, Alexis Goujon, Stanislas Ducotterd
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Abstract

We present a general variational framework for the training of freeform nonlinearities in layered computational architectures subject to some slope constraints. The regularization that we add to the traditional training loss penalizes the second-order total variation of each trainable activation. The slope constraints allow us to impose properties such as 1-Lipschitz stability, firm non-expansiveness, and monotonicity/invertibility. These properties are crucial to ensure the proper functioning of certain classes of signal-processing algorithms (e.g., plug-and-play schemes, unrolled proximal gradient, invertible flows). We prove that the global optimum of the stated constrained-optimization problem is achieved with nonlinearities that are adaptive nonuniform linear splines. We then show how to solve the resulting function-optimization problem numerically by representing the nonlinearities in a suitable (nonuniform) B-spline basis. Finally, we illustrate the use of our framework with the data-driven design of (weakly) convex regularizers for the denoising of images and the resolution of inverse problems.
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类神经网络结构中点非线性的受控学习
我们提出了一个通用的变分框架,用于在受某些斜率约束的分层计算架构中训练自由形式非线性。我们加入传统训练损失的正则化惩罚了每个可训练激活的二阶总变化。斜率约束允许我们施加诸如1-Lipschitz稳定性,坚固非扩张性和单调性/可逆性等性质。这些特性对于确保某些类型的信号处理算法(例如,即插即用方案、展开的近端梯度、可逆流)的正常运行至关重要。证明了所述约束优化问题的全局最优解是用自适应非均匀线性样条实现的。然后,我们展示了如何通过在合适的(非均匀的)b样条基中表示非线性来解决结果函数优化问题。最后,我们用数据驱动的(弱)凸正则化设计来说明我们的框架在图像去噪和反问题解决中的应用。
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来源期刊
Applied and Computational Harmonic Analysis
Applied and Computational Harmonic Analysis 物理-物理:数学物理
CiteScore
5.40
自引率
4.00%
发文量
67
审稿时长
22.9 weeks
期刊介绍: Applied and Computational Harmonic Analysis (ACHA) is an interdisciplinary journal that publishes high-quality papers in all areas of mathematical sciences related to the applied and computational aspects of harmonic analysis, with special emphasis on innovative theoretical development, methods, and algorithms, for information processing, manipulation, understanding, and so forth. The objectives of the journal are to chronicle the important publications in the rapidly growing field of data representation and analysis, to stimulate research in relevant interdisciplinary areas, and to provide a common link among mathematical, physical, and life scientists, as well as engineers.
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