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Additive neurogenesis as a strategy for avoiding interference in a sparsely-coding dentate gyrus

机译:加性神经发生作为避免在稀疏编码齿状回中产生干扰的策略

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摘要

Recently we presented a model of additive neurogenesis in a linear, feedforward neural network that performed an encoding-decoding memory task in a changing input environment. Growing the neural network over time allowed the network to adapt to changes in input statistics without disrupting retrieval properties, and we proposed that adult neurogenesis might fulfil a similar computational role in the dentate gyrus of the hippocampus. Here we explicitly evaluate this hypothesis by examining additive neurogenesis in a simplified hippocampal memory model. The model incorporates a divergence in unit number from the entorhinal cortex to the dentate gyrus and sparse coding in the dentate gyrus, both notable features of hippocampal processing. We evaluate two distinct adaptation strategies; neuronal turnover, where the network is of fixed size but units may be deleted and new ones added, and additive neurogenesis, where the network grows over time, and quantify the performance of the network across the full range of adaptation levels from zero in a fixed network to one in a fully adapting network. We find that additive neurogenesis is always superior to neuronal turnover as it permits the network to be responsive to changes in input statistics while at the same time preserving representations of earlier environments.
机译:最近,我们提出了线性前馈神经网络中加性神经发生的模型,该模型在变化的输入环境中执行了编码-解码存储任务。随着时间的推移,神经网络的不断发展使该网络能够适应输入统计数据的变化而不会破坏检索特性,并且我们提出,成年神经发生可能在海马齿状回中发挥类似的计算作用。在这里,我们通过在简化的海马记忆模型中检查加性神经发生来明确评估该假设。该模型合并了从内嗅皮层到齿状回的单位数差异以及齿状回的稀疏编码,这都是海马加工的显着特征。我们评估了两种不同的适应策略;神经元更新,其中网络的大小固定,但是可以删除并添加新的单元,以及累加神经发生,其中网络随着时间的推移而增长,并在整个适应水平范围(从零开始)中量化网络的性能网络到一个完全适应的网络。我们发现加性神经发生总是优于神经元更新,因为它允许网络响应输入统计数据的变化,同时保留早期环境的表示。

著录项

  • 来源
    《Network》 |2009年第3期|137-161|共25页
  • 作者单位

    Institute for Theoretical Biology, Humboldt Universitaet zu Berlin, Invalidenstrasse 43Berlin 10115, Germany;

    Institute for Theoretical Biology, Humboldt Universitaet zu Berlin, Invalidenstrasse 43Berlin 10115, Germany;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    network models; memory;

    机译:网络模型;记忆;
  • 入库时间 2022-08-18 01:51:59

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