作者
Tatyana Sharpee, Nicole C Rust, William Bialek
发表日期
2004/2/1
期刊
Neural computation
卷号
16
期号
2
页码范围
223-250
出版商
MIT Press
简介
We propose a method that allows for a rigorous statistical analysis of neural responses to natural stimuli that are nongaussian and exhibit strong correlations. We have in mind a model in which neurons are selective for a small number of stimulus dimensions out of a high-dimensional stimulus space, but within this subspace the responses can be arbitrarily nonlinear. Existing analysis methods are based on correlation functions between stimuli and responses, but these methods are guaranteed to work only in the case of gaussian stimulus ensembles. As an alternative to correlation functions, we maximize the mutual information between the neural responses and projections of the stimulus onto low-dimensional subspaces. The procedure can be done iteratively by increasing the dimensionality of this subspace. Those dimensions that allow the recovery of all of the information between spikes and the full …
引用总数
2004200520062007200820092010201120122013201420152016201720182019202020212022202320241015152417121525193126193418192117146126