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Transferring Learning from External to Internal Weights in Echo-State Networks with Sparse Connectivity

机译:在具有稀疏连通性的回声状态网络中将学习权重从外部权重转移到内部权重

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摘要

Modifying weights within a recurrent network to improve performance on a task has proven to be difficult. Echo-state networks in which modification is restricted to the weights of connections onto network outputs provide an easier alternative, but at the expense of modifying the typically sparse architecture of the network by including feedback from the output back into the network. We derive methods for using the values of the output weights from a trained echo-state network to set recurrent weights within the network. The result of this “transfer of learning” is a recurrent network that performs the task without requiring the output feedback present in the original network. We also discuss a hybrid version in which online learning is applied to both output and recurrent weights. Both approaches provide efficient ways of training recurrent networks to perform complex tasks. Through an analysis of the conditions required to make transfer of learning work, we define the concept of a “self-sensing” network state, and we compare and contrast this with compressed sensing.
机译:事实证明,修改循环网络中的权重以提高任务的性能非常困难。回声状态网络(其中修改仅限于连接到网络输出的连接权重)提供了一种更容易的替代方法,但是以通过将输出的反馈信息反馈回网络来修改网络的典型稀疏结构为代价。我们推导了使用受过训练的回波状态网络的输出权重值来设置网络内递归权重的方法。这种“学习转移”的结果是一个循环网络,该循环网络执行任务而无需原始网络中存在输出反馈。我们还将讨论将在线学习应用于输出权重和递归权重的混合版本。两种方法都提供了训练循环网络以执行复杂任务的有效方法。通过分析进行学习工作转移所需的条件,我们定义了“自我感应”网络状态的概念,并将其与压缩感应进行比较和对比。

著录项

  • 作者

    Sussillo, David; Abbott, L.F.;

  • 作者单位
  • 年度 2012
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  • 原文格式 PDF
  • 正文语种 {"code":"en","name":"English","id":9}
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