Bae Hyojin, Park Sa-Yoon, Kim Sang Jeong, Kim Chang-Eop
Department of Physiology, Gachon University College of Korean Medicine, Seongnam, South Korea.
Department of Physiology, Seoul National University College of Medicine, Seoul, South Korea.
Front Comput Neurosci. 2022 Dec 21;16:1062392. doi: 10.3389/fncom.2022.1062392. eCollection 2022.
Sensorimotor information provided by mossy fibers (MF) is mapped to high-dimensional space by a huge number of granule cells (GrC) in the cerebellar cortex's input layer. Significant studies have demonstrated the computational advantages and primary contributor of this expansion recoding. Here, we propose a novel perspective on the expansion recoding where each GrC serve as a kernel basis function, thereby the cerebellum can operate like a kernel machine that implicitly use high dimensional (even infinite) feature spaces. We highlight that the generation of kernel basis function is indeed biologically plausible scenario, considering that the key idea of kernel machine is to memorize important input patterns. We present potential regimes for developing kernels under constrained resources and discuss the advantages and disadvantages of each regime using various simulation settings.
苔藓纤维(MF)提供的感觉运动信息由小脑皮质输入层中的大量颗粒细胞(GrC)映射到高维空间。大量研究已经证明了这种扩展编码的计算优势和主要贡献因素。在此,我们提出了一种关于扩展编码的新观点,即每个颗粒细胞充当一个核基函数,从而小脑可以像一个隐式使用高维(甚至无限)特征空间的核机器一样运行。我们强调,考虑到核机器的关键思想是记忆重要的输入模式,核基函数的生成确实是一种生物学上合理的情况。我们展示了在资源受限情况下开发核的潜在机制,并使用各种模拟设置讨论了每种机制的优缺点。