【24h】

Evolutionary aspects of reservoir computing

机译:水库计算的进化方面

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Reservoir computing (RC) is a powerful computational paradigm that allows high versatility with cheap learning. While other artificial intelligence approaches need exhaustive resources to specify their inner workings, RC is based on a reservoir with highly nonlinear dynamics that does not require a fine tuning of its parts. These dynamics project input signals into high-dimensional spaces, where training linear readouts to extract input features is vastly simplified. Thus, inexpensive learning provides very powerful tools for decision-making, controlling dynamical systems, classification, etc. RC also facilitates solving multiple tasks in parallel, resulting in a high throughput. Existing literature focuses on applications in artificial intelligence and neuroscience. We review this literature from an evolutionary perspective. RC's versatility makes it a great candidate to solve outstanding problems in biology, which raises relevant questions. Is RC as abundant in nature as its advantages should imply? Has it evolved? Once evolved, can it be easily sustained? Under what circumstances? (In other words, is RC an evolutionarily stable computing paradigm?) To tackle these issues, we introduce a conceptual morphospace that would map computational selective pressures that could select for or against RC and other computing paradigms. This guides a speculative discussion about the questions above and allows us to propose a solid research line that brings together computation and evolution with RC as test model of the proposed hypotheses.
机译:水库计算(RC)是一种强大的计算范式,允许具有廉价学习的高通用性。虽然其他人工智能方法需要详尽的资源来指定其内部工作,但RC基于具有高度非线性动态的水库,不需要微调其部分。这些动态项目将输入信号输入到高维空间,其中培训线性读数以提取输入特征大大简化。因此,廉价的学习提供了用于决策,控制动态系统,分类等的非常强大的工具.RC还促进并行解决多个任务,从而产生高吞吐量。现有文献侧重于人工智能和神经科学中的应用。我们从进化的角度审查了这个文献。 RC的多功能性使其成为解决生物学突出问题的伟大候选者,这提出了相关的问题。 rc是自然中的优势,因为它的优点应该暗示?它是否发展?一旦进化,它可以很容易持续吗?在什么情况下? (换句话说,RC是一种进化稳定的计算范式吗?)来解决这些问题,我们介绍了一个概念的形态学,可以映射可以为RC和其他计算范例选择的计算选择性压力。这指出了关于上述问题的投机性讨论,并允许我们提出一种坚实的研究线,将计算和演进与RC作为所提出的假设的测试模型一起汇集在一起​​。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号