Nonlinearly weighted multiple kernel learning for time series forecasting

Agus Widodo, I. Budi, B. Widjaja
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Abstract

Machine Learning methods such as Neural Network (NN) and Support Vector Regression (SVR) have been studied extensively for time series forecasting. Multiple Kernel Learning (MKL) which utilizes SVR as the predictor is yet another recent approaches to choose suitable kernels from a given pool of kernels by means of a linear combination of some base kernels. However, some literatures suggest that this linear combination of kernels cannot consistently outperform either the uniform combination of base kernels or simply the best single kernel. Hence, in this paper, other combination method is devised, namely the squared combination of base kernels, which gives more weight on suitable kernels and vice versa. We use time series data having various length, pattern and horizons, namely the 111 time series from NN3 competition, 3003 of M3 competition, 1001 of Ml competition and reduced 111 of Ml competition. Our experimental results indicate that our new forecasting approaches using squared combination of Multiple Kernel Learning (MKL) may perform well compared to the other methods on the same dataset.
时间序列预测的非线性加权多核学习
神经网络(NN)和支持向量回归(SVR)等机器学习方法在时间序列预测中得到了广泛的研究。多核学习(Multiple Kernel Learning, MKL)是利用支持向量回归(SVR)作为预测器,通过一些基本核的线性组合,从给定核池中选择合适核的一种新方法。然而,一些文献表明,这种核的线性组合既不能始终优于基本核的均匀组合,也不能仅仅优于最佳的单个核。因此,本文设计了另一种组合方法,即基核的平方组合,它赋予合适的核更大的权重,反之亦然。我们使用不同长度、模式和视野的时间序列数据,即NN3竞争的111个时间序列、M3竞争的3003个时间序列、Ml竞争的1001个时间序列和Ml竞争的精简111个时间序列。我们的实验结果表明,与其他方法相比,我们使用多核学习的平方组合(MKL)的新预测方法在相同的数据集上表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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