首页> 外文会议>2011 IEEE International Workshop on Machine Learning for Signal Processing >An adaptive decoder from spike trains to micro-stimulation using kernel least-mean-squares (KLMS)
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An adaptive decoder from spike trains to micro-stimulation using kernel least-mean-squares (KLMS)

机译:使用内核最小均方(KLMS)的自适应解码器,从峰值训练到微刺激

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This paper proposes a nonlinear adaptive decoder for somatosensory micro-stimulation based on the kernel least mean square (KLMS) algorithm applied directly on the space of spike trains. Instead of using a binned representation of spike trains, we transform the vector of spike times into a function in reproducing kernel Hilbert space (RKHS), where the inner product of two spike time vectors is defined by a nonlinear cross intensity kernel. This representation encapsulates the statistical description of the point process that generates the spike trains, and bypasses the curse of dimensionality-resolution of the binned spike representations. We compare our method with two other methods based on binned data: GLM and KLMS, in reconstructing biphasic micro-stimulation. The results indicate that the KLMS based on RKHS for spike train is able to detect the timing, the shape and the amplitude of the biphasic stimulation with the best accuracy.
机译:本文提出了一种基于核最小均方(KLMS)算法的体感微刺激非线性自适应解码器,该算法直接应用于尖峰序列的空间。我们不使用峰值信号列的二进制表示,而是将峰值时间向量转换为再现内核希尔伯特空间(RKHS)的函数,其中两个峰值时间向量的内积由非线性交叉强度内核定义。此表示封装了生成尖峰序列的点过程的统计描述,并绕开了合并的尖峰表示的维数分辨率的诅咒。我们将我们的方法与基于合并数据的其他两种方法(GLM和KLMS)进行比较,以重建双相微刺激。结果表明,基于RKHS的尖峰序列KLMS能够以最佳精度检测双相刺激的时间,形状和幅度。

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