线性规划核稀疏学习的分解函数和新的激活函数

Zhao Lu, Haoda Fu, William R. Prucka
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摘要

预解算子和相应的格林函数在微分方程和积分方程、算子理论,特别是现代物理学领域占据着中心地位。然而,在机器学习领域,当面对来自现实世界的复杂且极具挑战性的学习任务时,格林预解函数的威力却很少被探索和利用。本文旨在对传统的平移不变核和旋转不变核进行创新,通过对利用预解算子及其格林函数构造核函数的新观点的理论研究。从实际角度来看,在线性规划支持向量学习的场景中,新开发的核函数用于从噪声破坏的数据中进行稳健的信号恢复。特别地,单调和非单调激活函数被用于内核设计,以提高表示能力。通过这种方式,从以下两个方面为基于核的鲁棒稀疏学习提供了一个新的维度:首先,通过弥合预解算子与格林函数理论的数学微妙之处和核构造之间的差距,提出了新的理论框架;其次,具体化了神经网络中激活函数设计与非线性核设计的融合。最后,实验研究证明了新开发的核函数在鲁棒信号恢复和多尺度稀疏建模方面的潜力和优越性,这是消除现代信号处理和计算智能领域之间明显界限的一步。
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Resolvent and new activation functions for linear programming kernel sparse learning

The resolvent operator and the corresponding Green’s function occupy a central position in the realms of differential and integral equations, operator theory, and in particular the modern physics. However, in the field of machine learning, when confronted with the complex and highly challenging learning tasks from the real world, the prowess of Green’s function of resolvent is rarely explored and exploited. This paper aims at innovating the conventional translation-invariant kernels and rotation-invariant kernels, through theoretical investigation into a new view of constructing kernel functions by means of the resolvent operator and its Green’s function. From the practical perspective, the newly developed kernel functions are applied for robust signal recovery from noise corrupted data in the scenario of linear programming support vector learning. In particular, the monotonic and non-monotonic activation functions are used for kernel design to improve the representation capability. In this manner, a new dimension is given for kernel-based robust sparse learning from the following two aspects: firstly, a new theoretical framework by bridging the gap between the mathematical subtleties of resolvent operator and Green’s function theory and kernel construction; secondly, a concretization for the fusion between activation functions design in neural networks and nonlinear kernels design. Finally, the experimental study demonstrates the potential and superiority of the newly developed kernel functions in robust signal recovery and multiscale sparse modeling, as one step towards removing the apparent boundaries between the realms of modern signal processing and computational intelligence.

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