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Bayesian Inference for Spiking Neuron Models with a Sparsity Prior

机译:具有稀疏先验的神经元模型的贝叶斯推断

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Generalized linear models are the most commonly used tools to describe the stimulus selectivity of sensory neurons. Here we present a Bayesian treatment of such models. Using the expectation propagation algorithm, we are able to approximate the full posterior distribution over all weights. In addition, we use a Laplacian prior to favor sparse solutions. Therefore, stimulus features that do not critically influence neural activity will be assigned zero weights and thus be effectively excluded by the model. This feature selection mechanism facilitates both the interpretation of the neuron model as well as its predictive abilities. The posterior distribution can be used to obtain confidence intervals which makes it possible to assess the statistical significance of the solution. In neural data analysis, the available amount of experimental measurements is often limited whereas the parameter space is large. In such a situation, both regularization by a sparsity prior and uncertainty estimates for the model parameters are essential. We apply our method to multi-electrode recordings of retinal ganglion cells and use our uncertainty estimate to test the statistical significance of functional couplings between neurons. Furthermore we used the sparsity of the Laplace prior to select those filters from a spike-triggered covariance analysis that are most informative about the neural response.
机译:广义线性模型是描述感觉神经元刺激选择性的最常用工具。在这里,我们介绍这种模型的贝叶斯处理。使用期望传播算法,我们可以近似估计所有权重的全部后验分布。此外,在使用稀疏解决方案之前,我们先使用拉普拉斯算子。因此,不会严重影响神经活动的刺激特征将被赋予零权重,从而被模型有效排除。这种特征选择机制有助于神经元模型的解释及其预测能力。后验分布可用于获得置信区间,从而可以评估解决方案的统计显着性。在神经数据分析中,实验测量的可用数量通常受到限制,而参数空间却很大。在这种情况下,稀疏先验的正则化和模型参数的不确定性估计都是必不可少的。我们将我们的方法应用于视网膜神经节细胞的多电极记录,并使用我们的不确定性估计来测试神经元之间功能耦合的统计学意义。此外,在从尖峰触发的协方差分析中选择那些对神经反应最有帮助的过滤器之前,我们先使用了拉普拉斯的稀疏性。

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