论文标题
机器学习链接链接推断噪声延迟耦合网络与光电测试
Machine Learning Link Inference of Noisy Delay-coupled Networks with Opto-Electronic Experimental Tests
论文作者
论文摘要
我们设计了一种机器学习技术来解决有时间延期的网络链接的一般问题。目的是仅从网络节点状态的时间序列数据进行操作。该任务在从应用物理和工程到神经科学和生物学的领域中具有应用。为了实现这一目标,我们首先训练一种称为储层计算的机器学习系统,以模仿未知网络的动力学。我们制定并测试一种使用储层系统输出层的训练参数来推断未知网络结构的估计的技术。从本质上讲,我们的技术是非侵入性的,但是由广泛使用的侵入性网络推理方法激发的,即观察到对应用于网络的主动扰动的响应被观察到并用于推断网络链接(例如,将基因敲低以推断基因调节网络)。我们从延迟耦合的光电振荡器网络中对实验和模拟数据进行了测试。我们表明,该技术通常会产生非常好的结果,特别是如果系统不表现出同步。我们还发现,动态噪声的存在可以显着提高我们技术的准确性和能力,尤其是在表现出同步的网络中。
We devise a machine learning technique to solve the general problem of inferring network links that have time-delays. The goal is to do this purely from time-series data of the network nodal states. This task has applications in fields ranging from applied physics and engineering to neuroscience and biology. To achieve this, we first train a type of machine learning system known as reservoir computing to mimic the dynamics of the unknown network. We formulate and test a technique that uses the trained parameters of the reservoir system output layer to deduce an estimate of the unknown network structure. Our technique, by its nature, is non-invasive, but is motivated by the widely-used invasive network inference method whereby the responses to active perturbations applied to the network are observed and employed to infer network links (e.g., knocking down genes to infer gene regulatory networks). We test this technique on experimental and simulated data from delay-coupled opto-electronic oscillator networks. We show that the technique often yields very good results particularly if the system does not exhibit synchrony. We also find that the presence of dynamical noise can strikingly enhance the accuracy and ability of our technique, especially in networks that exhibit synchrony.