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A neural network implementing optimal state estimation based on dynamic spike train decoding

机译:基于动态峰值序列解码实现最优状态估计的神经网络

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It is becoming increasingly evident that organisms acting in uncertain dynamical environments often employ exact or approximate Bayesian statistical calculations in order to continuously estimate the environmental state, integrate information from multiple sensory modalities, form predictions and choose actions. What is less clear is how these putative computations are implemented by cortical neural networks. An additional level of complexity is introduced because these networks observe the world through spike trains received from primary sensory afferents, rather than directly. A recent line of research has described mechanisms by which such computations can be implemented using a network of neurons whose activity directly represents a probability distribution across the possible "world states". Much of this work, however, uses various approximations, which severely restrict the domain of applicability of these implementations. Here we make use of rigorous mathematical results from the theory of continuous time point process filtering, and show how optimal real-time state estimation and prediction may be implemented in a general setting using linear neural networks. We demonstrate the applicability of the approach with several examples, and relate the required network properties to the statistical nature of the environment, thereby quantifying the compatibility of a given network with its environment.
机译:越来越明显的是,在不确定的动态环境中活动的生物通常采用精确或近似的贝叶斯统计计算,以便连续估算环境状态,整合来自多种感官形式的信息,形成预测并选择动作。尚不清楚的是皮质神经网络如何实现这些假定的计算。引入了更高的复杂性,因为这些网络通过从主要感官传入而不是直接传入的尖峰序列来观察世界。最近的研究线描述了可以使用神经元网络来实现这种计算的机制,这些神经元的活动直接表示跨可能的“世界状态”的概率分布。但是,许多工作使用了各种近似值,这些近似值严重限制了这些实现的适用范围。在这里,我们利用来自连续时间点过程过滤理论的严格数学结果,并说明如何在一般情况下使用线性神经网络来实现最佳实时状态估计和预测。我们通过几个示例演示了该方法的适用性,并将所需的网络属性与环境的统计性质相关联,从而量化了给定网络与其环境的兼容性。

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