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Missing mass approximations for the partition function of stimulus driven Ising models

机译:刺激驱动的伊辛模型的分区函数缺少质量近似

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Ising models are routinely used to quantify the second order, functional structure of neural populations. With some recent exceptions, they generally do not include the influence of time varying stimulus drive. Yet if the dynamics of network function are to be understood, time varying stimuli must be taken into account. Inclusion of stimulus drive carries a heavy computational burden because the partition function becomes stimulus dependent and must be separately calculated for all unique stimuli observed. This potentially increases computation time by the length of the data set. Here we present an extremely fast, yet simply implemented, method for approximating the stimulus dependent partition function in minutes or seconds. Noting that the most probable spike patterns (which are few) occur in the training data, we sum partition function terms corresponding to those patterns explicitly. We then approximate the sum over the remaining patterns (which are improbable, but many) by casting it in terms of the stimulus modulated missing mass (total stimulus dependent probability of all patterns not observed in the training data). We use a product of conditioned logistic regression models to approximate the stimulus modulated missing mass. This method has complexity of roughly O(LNNpat) where is L the data length, N the number of neurons and Npat the number of unique patterns in the data, contrasting with the O(L2N) complexity of alternate methods. Using multiple unit recordings from rat hippocampus, macaque DLPFC and cat Area 18 we demonstrate our method requires orders of magnitude less computation time than Monte Carlo methods and can approximate the stimulus driven partition function more accurately than either Monte Carlo methods or deterministic approximations. This advance allows stimuli to be easily included in Ising models making them suitable for studying population based stimulus encoding.
机译:Ising模型通常用于量化神经种群的二阶功能结构。除了最近的一些例外,它们通常不包括时变刺激驱动的影响。但是,如果要了解网络功能的动态性,则必须考虑时变刺激。包含激励驱动会带来沉重的计算负担,因为分区函数变得依赖于激励,因此必须针对观察到的所有唯一刺激分别计算。这可能会使计算时间增加数据集的长度。在这里,我们提出了一种非常快速但简单实施的方法,可以在几分钟或几秒钟内逼近与刺激相关的分区函数。注意到最可能的尖峰模式(很少)出现在训练数据中,我们将与这些模式相对应的分区函数项相加。然后,我们根据刺激调制的缺失质量(在训练数据中未观察到的所有模式的总依赖于刺激的概率)进行转换,从而对其余模式(这是不可能的,但很多)上的总和进行近似。我们使用条件Logistic回归模型的乘积来近似估计刺激调制的缺失质量。与其他方法的O(L2N)复杂度相比,此方法的复杂度大致为O(LNNpat),其中L为数据长度,N为神经元数量,Npat为数据中唯一模式的数量。使用大鼠海马,猕猴DLPFC和猫18区的多个单位记录,我们证明了我们的方法比Monte Carlo方法所需的计算时间少几个数量级,并且与Monte Carlo方法或确定性近似方法相比,可以更准确地近似刺激驱动的分区函数。这一进步使得刺激可以轻松地包含在Ising模型中,从而使其适合于研究基于人群的刺激编码。

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