In this work, we propose an ensemble forecasting approach based on randomized neural networks. Improved randomized learning streamlines the fitting abilities of individual learners by generating network parameters in accordance with the data and target function features. A pattern-based representation of time series makes the proposed approach suitable for forecasting time series with multiple seasonality. We propose six strategies for controlling the diversity of ensemble members. Case studies conducted on four real-world forecasting problems verified the effectiveness and superior performance of the proposed ensemble forecasting approach. It outperformed statistical models as well as state-of-the-art machine learning models in terms of forecasting accuracy. The proposed approach has several advantages: fast and easy training, simple architecture, ease of implementation, high accuracy and the ability to deal with nonstationarity and multiple seasonality in time series.
翻译:在这项工作中,我们建议采用基于随机神经网络的混合预测方法; 改进随机学习,根据数据和目标功能特点生成网络参数,从而简化个别学习者的适当能力; 以模式为基础的时间序列说明使所提议的方法适合于预测具有多种季节性的时间序列; 我们提出了控制共同成员多样性的六项战略; 对四个现实世界预测问题进行的个案研究,验证了拟议的共同预测方法的有效性和优异性; 它在预测准确性方面优异的统计模型以及最先进的机器学习模型; 拟议的方法有若干优点:快速和容易的培训、简单的结构、容易实施、高度准确性和在时间序列中处理不常态和多季节性的能力。