University of York, York, United Kingdom.
University of York, York, United Kingdom.
Artif Intell Med. 2018 Mar;86:53-59. doi: 10.1016/j.artmed.2018.02.002. Epub 2018 Feb 21.
Despite having notable advantages over established machine learning methods for time series analysis, reservoir computing methods, such as echo state networks (ESNs), have yet to be widely used for practical data mining applications. In this paper, we address this deficit with a case study that demonstrates how ESNs can be trained to predict disease labels when stimulated with movement data. Since there has been relatively little prior research into using ESNs for classification, we also consider a number of different approaches for realising input-output mappings. Our results show that ESNs can carry out effective classification and are competitive with existing approaches that have significantly longer training times, in addition to performing similarly with models employing conventional feature extraction strategies that require expert domain knowledge. This suggests that ESNs may prove beneficial in situations where predictive models must be trained rapidly and without the benefit of domain knowledge, for example on high-dimensional data produced by wearable medical technologies. This application area is emphasized with a case study of Parkinson's disease patients who have been recorded by wearable sensors while performing basic movement tasks.
尽管与已建立的机器学习方法相比,储层计算方法(如回声状态网络(ESN))在时间序列分析方面具有显著优势,但它们尚未广泛应用于实际的数据挖掘应用中。在本文中,我们通过一个案例研究来解决这一不足,该研究展示了如何在受到运动数据刺激时训练 ESN 来预测疾病标签。由于之前很少有研究将 ESN 用于分类,因此我们还考虑了许多不同的方法来实现输入-输出映射。我们的研究结果表明,ESN 可以进行有效的分类,并且与那些训练时间明显更长的现有方法相比具有竞争力,此外,与使用需要专家领域知识的传统特征提取策略的模型相比,它们的性能也相当。这表明,在需要快速训练预测模型而又没有领域知识的情况下,例如在可穿戴医疗技术产生的高维数据上,ESN 可能会很有用。本文通过一个帕金森病患者的案例研究强调了这一应用领域,这些患者在执行基本运动任务时被可穿戴传感器记录下来。