Hands-on reservoir computing: a tutorial for practical implementation

Matteo Cucchi, Steven Abreu, G. Ciccone, D. Brunner, H. Kleemann
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引用次数: 31

Abstract

This manuscript serves a specific purpose: to give readers from fields such as material science, chemistry, or electronics an overview of implementing a reservoir computing (RC) experiment with her/his material system. Introductory literature on the topic is rare and the vast majority of reviews puts forth the basics of RC taking for granted concepts that may be nontrivial to someone unfamiliar with the machine learning field (see for example reference Lukoševičius (2012 Neural Networks: Tricks of the Trade (Berlin: Springer) pp 659–686). This is unfortunate considering the large pool of material systems that show nonlinear behavior and short-term memory that may be harnessed to design novel computational paradigms. RC offers a framework for computing with material systems that circumvents typical problems that arise when implementing traditional, fully fledged feedforward neural networks on hardware, such as minimal device-to-device variability and control over each unit/neuron and connection. Instead, one can use a random, untrained reservoir where only the output layer is optimized, for example, with linear regression. In the following, we will highlight the potential of RC for hardware-based neural networks, the advantages over more traditional approaches, and the obstacles to overcome for their implementation. Preparing a high-dimensional nonlinear system as a well-performing reservoir for a specific task is not as easy as it seems at first sight. We hope this tutorial will lower the barrier for scientists attempting to exploit their nonlinear systems for computational tasks typically carried out in the fields of machine learning and artificial intelligence. A simulation tool to accompany this paper is available online 7 7 https://github.com/stevenabreu7/handson_reservoir.. https://github.com/stevenabreu7/handson_reservoir.
动手水库计算:教程的实际实施
这份手稿服务于一个特定的目的:给读者从领域,如材料科学,化学,或电子学实现一个水库计算(RC)实验与她/他的材料系统的概述。关于该主题的介绍性文献很少,绝大多数评论提出了RC的基本概念,这些概念对于不熟悉机器学习领域的人来说可能是不平凡的(例如参考Lukoševičius (2012 Neural Networks: Tricks of the Trade (Berlin: Springer) pp 659-686)。考虑到大量材料系统显示出非线性行为和短期记忆,这可能被用来设计新的计算范式,这是不幸的。RC为材料系统的计算提供了一个框架,它规避了在硬件上实现传统的、成熟的前馈神经网络时出现的典型问题,例如最小的设备到设备的可变性,以及对每个单元/神经元和连接的控制。相反,可以使用随机的、未经训练的存储库,其中只有输出层被优化,例如,使用线性回归。在下文中,我们将重点介绍RC在基于硬件的神经网络中的潜力,其相对于传统方法的优势,以及其实现需要克服的障碍。准备一个高维非线性系统作为一个性能良好的水库来完成一个特定的任务并不像乍一看那么容易。我们希望本教程将降低科学家试图利用非线性系统进行机器学习和人工智能领域中典型的计算任务的障碍。本文附带的仿真工具可在网上获得7 7 https://github.com/stevenabreu7/handson_reservoir..https://github.com/stevenabreu7/handson_reservoir。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
5.90
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0.00%
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