IEEE Trans Neural Netw Learn Syst. 2012 Mar;23(3):425-38. doi: 10.1109/TNNLS.2011.2179810.
This paper presents a wide framework for non-linear online supervised learning tasks in the context of complex valued signal processing. The (complex) input data are mapped into a complex reproducing kernel Hilbert space (RKHS), where the learning phase is taking place. Both pure complex kernels and real kernels (via the complexification trick) can be employed. Moreover, any convex, continuous and not necessarily differentiable function can be used to measure the loss between the output of the specific system and the desired response. The only requirement is the subgradient of the adopted loss function to be available in an analytic form. In order to derive analytically the subgradients, the principles of the (recently developed) Wirtinger's calculus in complex RKHS are exploited. Furthermore, both linear and widely linear (in RKHS) estimation filters are considered. To cope with the problem of increasing memory requirements, which is present in almost all online schemes in RKHS, the sparsification scheme, based on projection onto closed balls, has been adopted. We demonstrate the effectiveness of the proposed framework in a non-linear channel identification task, a non-linear channel equalization problem and a quadrature phase shift keying equalization scheme, using both circular and non circular synthetic signal sources.
本文提出了一种用于复杂值信号处理背景下的非线性在线监督学习任务的广泛框架。(复数)输入数据被映射到一个复再生核希尔伯特空间(RKHS)中,学习阶段就在这里进行。可以使用纯复数核和实数核(通过复形技巧)。此外,任何凸、连续且不一定可微的函数都可以用来衡量特定系统的输出与期望响应之间的损失。唯一的要求是所采用的损失函数的次梯度以解析形式提供。为了在分析上推导出次梯度,利用了在复 RKHS 中(最近开发的)Wirtinger 微积分的原理。此外,还考虑了线性和广泛线性(在 RKHS 中)估计滤波器。为了应对 RKHS 中几乎所有在线方案中存在的内存需求增加的问题,采用了基于闭球投影的稀疏化方案。我们使用圆形和非圆形合成信号源,在非线性信道识别任务、非线性信道均衡问题和正交相移键控均衡方案中展示了所提出框架的有效性。