Randomized artificial neural networks such as extreme learning machines provide an attractive and efficient method for supervised learning under limited computing ressources and green machine learning. This especially applies when equipping mobile devices (sensors) with weak artificial intelligence. Results are discussed about supervised learning with such networks and regression methods in terms of consistency and bounds for the generalization and prediction error. Especially, some recent results are reviewed addressing learning with data sampled by moving sensors leading to non-stationary and dependent samples. As randomized networks lead to random out-of-sample performance measures, we study a cross-validation approach to handle the randomness and make use of it to improve out-of-sample performance. Additionally, a computationally efficient approach to determine the resulting uncertainty in terms of a confidence interval for the mean out-of-sample prediction error is discussed based on two-stage estimation. The approach is applied to a prediction problem arising in vehicle integrated photovoltaics.
翻译:极端学习机器等随机人工神经网络为在有限的计算机资源源和绿色机器学习下有监督的学习提供了一种有吸引力和有效的方法,这在安装移动设备(传感器)时尤其适用,因为人工智能薄弱。讨论了与这些网络和回归方法在一致性和一般化和预测误差的界限方面有监督的学习结果。特别是,最近对一些结果进行了审查,通过移动传感器进行数据抽样学习,从而导致非静止和依赖性样本。由于随机网络导致随机的抽样性性性工作措施,我们研究一种交叉验证方法,处理随机性,并利用它来改进模拟性工作。此外,基于两阶段估计,对平均模拟性预测错误在信任间隔方面所产生的不确定性进行了讨论。这种方法用于预测车辆集成光伏的预测问题。