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首页> 外文期刊>Neural computation >Might a Single Neuron Solve InterestingMachine Learning Problems Through Successive Computations on Its Dendritic Tree?
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Might a Single Neuron Solve InterestingMachine Learning Problems Through Successive Computations on Its Dendritic Tree?

机译:可能是一个神经元在树突树上连续计算解决了兴趣的学习问题吗?

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摘要

Physiological experiments have highlighted how the dendrites of biological neurons can nonlinearly process distributed synaptic inputs. However, it is unclear how aspects of a dendritic tree, such as its branched morphology or its repetition of presynaptic inputs, determine neural computation beyond this apparent nonlinearity. Here we use a simple model where the dendrite is implemented as a sequence of thresholded linear units. We manipulate the architecture of this model to investigate the impacts of binary branching constraints and repetition of synaptic inputs on neural computation. We find that models with such manipulations can perform well on machine learning tasks, such as Fashion MNIST or Extended MNIST. We find that model performance on these tasks is limited by binary tree branching and dendritic asymmetry and is improved by the repetition of synaptic inputs to different dendritic branches. These computational experiments further neuroscience theory on how different dendritic properties might determine neural computation of clearly defined tasks.
机译:生理实验突出了生物神经元的树突如何非线性地处理分布式突触输入。然而,目前尚不清楚树突树的各个方面,例如其分支形态或其重复的突触前输入,确定超出这种明显非线性的神经计算。在这里,我们使用简单的模型,其中枝晶作为阈值线性单元的序列实现。我们操纵该模型的架构,以研究二元分支限制的影响和突触输入对神经计算的影响。我们发现具有此类操纵的型号可以在机器学习任务中表现出色,例如时尚Mnist或扩展Mnist。我们发现,这些任务的模型性能受到二叉树分支和树突状不对称的限制,并且通过重复突触输入到不同的树突分支而得到改善。这些计算实验进一步的神经科学理论有关不同的树突特性如何确定明确定义任务的神经计算。

著录项

  • 来源
    《Neural computation》 |2021年第6期|1554-1571|共18页
  • 作者单位

    Department of Neuroscience University of Pennsylvania Philadelphia PA 19104 U.S.A.;

    Departments of Neuroscience and Bioengineering University of Pennsylvania Philadelphia PA 19104 U.S.A.;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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