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A Theoretical Basis for Emergent Pattern Discrimination in Neural Systems Through Slow Feature Extraction

机译:慢特征提取的神经系统紧急模式识别的理论基础

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Neurons in the brain are able to detect and discriminate salient spatiotemporal patterns in the firing activity of presynaptic neurons. It is open how they can learn to achieve this, especially without the help of a supervisor. We show that a well-known unsupervised learning algorithm for linear neurons, slow feature analysis (SFA), is able to acquire the discrimination capability of one of the best algorithms for supervised linear discrimination learning, the Fisher linear discriminant (FLD), given suitable input statistics. We demonstrate the power of this principle by showing that it enables readout neurons from simulated cortical microcircuits to learn without any supervision to discriminate between spoken digits and to detect repeated firing patterns that are embedded into a stream of noise spike trains with the same firing statistics. Both these computer simulations and our theoretical analysis show that slow feature extraction enables neurons to extract and collect information that is spread out over a trajectory of firing states that lasts several hundred ms. In addition, it enables neurons to learn without supervision to keep track of time (relative to a stimulus onset, or the initiation of a motor response). Hence, these results elucidate how the brain could compute with trajectories of firing states rather than only with fixed point attractors. It also provides a theoretical basis for understanding recent experimental results on the emergence of view- and position-invariant classification of visual objects in inferior temporal cortex.
机译:大脑中的神经元能够检测和区分突触前神经元放电活动中的显着时空模式。他们如何学会实现这一目标是开放的,尤其是在没有主管的帮助下。我们显示了一种著名的线性神经元无监督学习算法,慢特征分析(SFA),能够获得监督线性歧视学习的最佳算法之一,Fisher线性判别(FLD)的辨别能力。输入统计信息。我们通过证明它可以使模拟皮质皮层微电路中的读出神经元学习,而无需任何监督以区分语音数字并检测具有相同触发统计数据的噪声尖峰串流中嵌入的重复触发模式,从而证明了该原理的威力。这些计算机模拟和我们的理论分析均表明,缓慢特征提取使神经元能够提取和收集信息,这些信息分布在持续几百毫秒的激发状态轨迹上。此外,它使神经元无需监督即可学习以跟踪时间(相对于刺激发作或运动反应的开始)。因此,这些结果阐明了大脑如何利用发射状态的轨迹进行计算,而不是仅利用定点吸引子进行计算。它还为理解最近的实验结果提供了理论依据,这些实验结果是关于颞下皮质视觉对象的视图和位置不变分类的出现。

著录项

  • 来源
    《Neural computation》 |2010年第12期|p.2979-3035|共57页
  • 作者

    Stefan Klampfl; Wolfgang Maass;

  • 作者单位

    Institute for Theoretical Computer Science, Graz University of Technology, A-8010 Graz, Austria;

    rnInstitute for Theoretical Computer Science, Graz University of Technology, A-8010 Graz, Austria;

  • 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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