Reservoir computing is a machine learning paradigm that uses a structure called a reservoir, which has nonlinearities and short-term memory. In recent years, reservoir computing has expanded to new functions such as the autonomous generation of chaotic time series, as well as time series prediction and classification. Furthermore, novel possibilities have been demonstrated, such as inferring the existence of previously unseen attractors. Sampling, in contrast, has a strong influence on such functions. Sampling is indispensable in a physical reservoir computer that uses an existing physical system as a reservoir because the use of an external digital system for the data input is usually inevitable. This study analyzes the effect of sampling on the ability of reservoir computing to autonomously regenerate chaotic time series. We found, as expected, that excessively coarse sampling degrades the system performance, but also that excessively dense sampling is unsuitable. Based on quantitative indicators that capture the local and global characteristics of attractors, we identify a suitable window of the sampling frequency and discuss its underlying mechanisms.
翻译:储量计算是一种机器学习模式,它使用一种称为储油层的结构,这种结构具有非线性和短期内存。近年来,储油层计算已扩大到新的功能,例如自动生成混乱的时间序列,以及时间序列的预测和分类。此外,还展示了新的可能性,例如推断存在先前看不见的吸引者。相比之下,抽样对这种功能具有强烈影响。在使用现有物理系统作为储油层的物理储油层计算机中,取样是不可或缺的,因为使用外部数字系统输入数据通常是不可避免的。本研究分析了取样对储油层计算能力的影响,以便自动再生混乱的时间序列。我们发现,如预期的那样,过度粗糙的取样会降低系统性能,但也发现过分密集的取样不合适。根据能捕捉吸引者的地方和全球特性的数量指标,我们找出取样频率的适当窗口,并讨论其基本机制。