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A COMPUTATIONALLY EFFICIENT METHOD FOR MODELING NEURAL SPIKING ACTIVITY WITH POINT PROCESSES NONPARAMETRICALLY

机译:一种用点处理的神经尖峰活动建模的计算有效方法

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Point process models have been shown to be useful in characterizing neural spiking activity (NSA) as a function of extrinsic and intrinsic factors. Most point process models of NSA are parametric as they are often efficiently computable. However, if the actual point process does not lie in the assumed parametric class of functions, misleading inferences can arise. Nonparametric methods are attractive due to fewer assumptions, but computation grows with the size of the data. We propose a computationally efficient method for nonparametric maximum likelihood estimation when the conditional intensity function, which characterizes the point process in its entirety, is assumed to be a Lipschitz continuous function but otherwise arbitrary. We show that by exploiting much structure, the problem becomes efficiently solvable and we compare our nonparametric estimation method to the most commonly used parametric approaches on goldfish retinal ganglion neural data. In this example, our nonparametric method gives a superior absolute goodness-of-fit measure than all parametric approaches analyzed.
机译:点的过程模型已经被证明是在表征神经尖峰活性(NSA)作为外在和内在因素的函数是有用的。因为他们往往是有效的计算NSA的大多数点过程模型参数。但是,如果实际点的过程中不在于假设参数类的功能,误导性推论可能出现。非参数方法是有吸引力的,由于较少的假设,但计算的增长与数据的大小。我们提出了非参数的最大似然估计的计算上高效的方法条件强度函数,其表征该点过程将其全部,被假定为一个Lipschitz连续函数,但否则任意时。我们发现,通过利用多结构,问题就变得有效解决的,我们比较我们的非参数估计方法上的金鱼视网膜神经节神经数据最常用的参数方法。在这个例子中,我们的非参数方法提供了比所有参数方法分析了一个优越的绝对优度适合的措施。

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