论文标题
格林的功能以优化储层计算进行复发
Unfolding recurrence by Green's functions for optimized reservoir computing
论文作者
论文摘要
皮质网络是强烈的复发,神经元具有内在的时间动力学。这使他们与深馈网络区分开来。尽管进料前网络的应用及其理论理解取得了巨大进展,但尚不清楚复发性皮质网络中复发和非线性的相互作用如何有助于其功能。这项工作的目的是提出可解决的反复网络模型,该模型链接到馈电网络。通过扰动方法,我们将时间连续的,复发的动力学转化为线性和非线性颞核的有效馈送结构。由此产生的分析表达式使我们能够从随机储层网络构建最佳的时间序列分类器。首先,这使我们不仅可以优化读取向量,而且还可以优化输入投影,从而表明了强大的潜在性能增益。其次,分析揭示了二阶刺激统计是如何与动力学的非线性相互作用并提高性能的关键要素。
Cortical networks are strongly recurrent, and neurons have intrinsic temporal dynamics. This sets them apart from deep feed-forward networks. Despite the tremendous progress in the application of feed-forward networks and their theoretical understanding, it remains unclear how the interplay of recurrence and non-linearities in recurrent cortical networks contributes to their function. The purpose of this work is to present a solvable recurrent network model that links to feed forward networks. By perturbative methods we transform the time-continuous, recurrent dynamics into an effective feed-forward structure of linear and non-linear temporal kernels. The resulting analytical expressions allow us to build optimal time-series classifiers from random reservoir networks. Firstly, this allows us to optimize not only the readout vectors, but also the input projection, demonstrating a strong potential performance gain. Secondly, the analysis exposes how the second order stimulus statistics is a crucial element that interacts with the non-linearity of the dynamics and boosts performance.