首页> 外文期刊>Network >Computing loss of efficiency in optimal Bayesian decoders given noisy or incomplete spike trains
【24h】

Computing loss of efficiency in optimal Bayesian decoders given noisy or incomplete spike trains

机译:给定嘈杂或不完整尖峰序列,计算最佳贝叶斯解码器的效率损失

获取原文
获取原文并翻译 | 示例
       

摘要

We investigate Bayesian methods for optimal decoding of noisy or incompletely-observed spike trains. Information about neural identity or temporal resolution may be lost during spike detection and sorting, or spike times measured near the soma may be corrupted with noise due to stochastic membrane channel effects in the axon. We focus on neural encoding models in which the (discrete) neural state evolves according to stimulus-dependent Markovian dynamics. Such models are sufficiently flexible that we may incorporate realistic stimulus encoding and spiking dynamics, but nonetheless permit exact computation via efficient hidden Markov model forward-backward methods. We analyze two types of signal degradation. First, we quantify the information lost due to jitter or downsampling in the spike-times. Second, we quantify the information lost when knowledge of the identities of different spiking neurons is corrupted. In each case the methods introduced here make it possible to quantify the dependence of the information loss on biophysical parameters such as firing rate, spike jitter amplitude, spike observation noise, etc. In particular, decoders that model the probability distribution of spike-neuron assignments significantly outperform decoders that use only the most likely spike assignments, and are ignorant of the posterior spike assignment uncertainty.
机译:我们调查贝叶斯方法,以对嘈杂或未完全观察到的尖峰火车进行最佳解码。有关神经身份或时间分辨力的信息可能会在峰值检测和分类过程中丢失,或者由于轴突中的随机膜通道效应,靠近体细胞的峰值时间可能会被噪声破坏。我们关注于神经编码模型,其中(离散)神经状态根据依赖于刺激的马尔可夫动力学而发展。这样的模型足够灵活,我们可以结合现实的刺激编码和尖峰动态,但是仍然可以通过有效的隐马尔可夫模型向前-向后方法进行精确计算。我们分析两种类型的信号衰减。首先,我们量化由于尖峰时间的抖动或下采样导致的信息丢失。第二,我们量化了当不同的尖峰神经元的身份知识被破坏时丢失的信息。在每种情况下,此处介绍的方法都可以量化信息丢失对生物物理参数(如发射速率,尖峰抖动幅度,尖峰观察噪声等)的依赖性。特别是,对尖峰神经元分配的概率分布建模的解码器大大优于仅使用最可能的尖峰分配的解码器,并且对后尖峰分配的不确定性一无所知。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号