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On nonlinearity in neural encoding models applied to the primary visual cortex

机译:关于应用于初级视觉皮层的神经编码模型中的非线性

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摘要

Within the regression framework, we show how different levels of nonlinearity influence the instantaneous firing rate prediction of single neurons. Nonlinearity can be achieved in several ways. In particular, we can enrich the predictor set with basis expansions of the input variables (enlarging the number of inputs) or train a simple but different model for each area of the data domain. Spline-based models are popular within the first category. Kernel smoothing methods fall into the second category. Whereas the first choice is useful for globally characterizing complex functions, the second is very handy for temporal data and is able to include inner-state subject variations. Also, interactions among stimuli are considered. We compare state-of-the-art firing rate prediction methods with some more sophisticated spline-based nonlinear methods: multivariate adaptive regression splines and sparse additive models. We also study the impact of kernel smoothing. Finally, we explore the combination of various local models in an incremental learning procedure. Our goal is to demonstrate that appropriate nonlinearity treatment can greatly improve the results. We test our hypothesis on both synthetic data and real neuronal recordings in cat primary visual cortex, giving a plausible explanation of the results from a biological perspective.
机译:在回归框架内,我们显示了不同程度的非线性如何影响单个神经元的瞬时放电速率预测。非线性可以通过几种方式实现。特别是,我们可以通过输入变量的基础扩展(扩大输入数量)来丰富预测变量集,或者针对数据域的每个区域训练一个简单但不同的模型。基于样条的模型在第一类中很流行。内核平滑方法属于第二类。第一种选择对于全局表征复杂功能很有用,而第二种选择对于时态数据非常方便,并且能够包含内部状态的主题变化。另外,考虑刺激之间的相互作用。我们将最新的点火速率预测方法与一些更复杂的基于样条的非线性方法进行比较:多元自适应回归样条和稀疏加性模型。我们还研究了内核平滑的影响。最后,我们在增量学习过程中探索了各种局部模型的组合。我们的目标是证明适当的非线性处理可以大大改善结果。我们在猫原发性视觉皮层中测试了关于合成数据和真实神经元记录的假设,从生物学角度对结果进行了合理的解释。

著录项

  • 来源
    《Network》 |2011年第4期|p.97-125|共29页
  • 作者单位

    Computational Intelligence Group, Departamento de Inteligencia Artificial, Universidad Politecnica de Madrid, Spain,Universidad Politecnica de Madrid, Departamento de Inteligencia Artificial, Campus de Montegancedo, Boadilla del Monte, 28660 Spain;

    Computational Intelligence Group, Departamento de Inteligencia Artificial, Universidad Politecnica de Madrid, Spain;

    Computational Intelligence Group, Departamento de Inteligencia Artificial, Universidad Politecnica de Madrid, Spain;

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

    spiking neurons;

    机译:尖刺神经元;
  • 入库时间 2022-08-18 01:49:59

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