Supervised learning in reproducing kernel Hilbert space (RKHS) and vector-valued RKHS (vvRKHS) has been investigated for more than 30 years. In this paper, we provide a new twist to this rich literature by generalizing supervised learning in RKHS and vvRKHS to reproducing kernel Hilbert $C^*$-module (RKHM), and show how to construct effective positive-definite kernels by considering the perspective of $C^*$-algebra. Unlike the cases of RKHS and vvRKHS, we can use $C^*$-algebras to enlarge representation spaces. This enables us to construct RKHMs whose representation power goes beyond RKHSs, vvRKHSs, and existing methods such as convolutional neural networks. Our framework is suitable, for example, for effectively analyzing image data by allowing the interaction of Fourier components.
翻译:30多年来,我们一直在研究复制核心Hilbert空间(RKHS)和矢量价值RKHS(VvRKHS)的监管学习,通过将RKHS和 vvRKHS的监管学习推广到复制核心Hilbert $C ⁇ $$-moule(RKHM),并展示如何通过考虑$C ⁇ $-algebra的观点来构建有效的正定内核。与RKHS和 vvRKHS的情况不同,我们可以使用$C ⁇ $-algebras来扩大代表空间。这使我们能够建设其代表力超过RKHS、vRKHS和现有的神经网络等方法的RKHMS。例如,我们的框架适合于通过允许四倍以上的组件的相互作用来有效分析图像数据。