National Institute of Information and Communications Technology, Tokyo, 184-8795, Japan.
Hamamatsu Photonics K.K., Hamamatsu, 434-8601, Japan.
Sci Rep. 2022 Oct 6;12(1):16697. doi: 10.1038/s41598-022-21235-y.
Reservoir computing is a computational framework of recurrent neural networks and is gaining attentions because of its drastically simplified training process. For a given task to solve, however, the methodology has not yet been established how to construct an optimal reservoir. While, "small-world" network has been known to represent networks in real-world such as biological systems and social community. This network is categorized amongst those that are completely regular and totally disordered, and it is characterized by highly-clustered nodes with a short path length. This study aims at providing a guiding principle of systematic synthesis of desired reservoirs by taking advantage of controllable parameters of the small-world network. We will validate the methodology using two different types of benchmark tests-classification task and prediction task.
储层计算是一种递归神经网络的计算框架,由于其训练过程大大简化,因此引起了人们的关注。然而,对于给定的要解决的任务,尚未建立如何构建最佳储层的方法。同时,“小世界”网络已被认为是表示生物系统和社会社区等现实世界中的网络。这种网络属于完全规则和完全无序的网络之间,其特点是具有短路径长度的高度聚类节点。本研究旨在通过利用小世界网络的可控参数,为通过系统综合来获得所需储层提供指导原则。我们将使用两种不同类型的基准测试(分类任务和预测任务)来验证该方法。