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A sparse kernel algorithm for online time series data prediction

机译:在线时间序列数据预测的稀疏核算法

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摘要

Kernel based methods have been widely applied for signal analysis and processing. In this paper, we propose a sparse kernel based algorithm for online time series prediction. In classical kernel methods, the kernel function number is very large which makes them of a high computational cost and only applicable for off-line or batch learning. In online learning settings, the learning system is updated when each training sample is obtained and it requires a higher computational speed. To make the kernel methods suitable for online learning, we propose a sparsification method based on the Hessian matrix of the system loss function to continuously examine the significance of the new training sample in order to select a sparse dictionary (support vector set). The Hessian matrix is equivalent to the correlation matrix of sample inputs in the kernel weight updating using the recursive least square (RLS) algorithm. This makes the algorithm able to be easily implemented with an affordable computational cost for real-time applications. Experimental results show the ability of the proposed algorithm for both real-world and artificial time series data forecasting and prediction.
机译:基于内核的方法已广泛应用于信号分析和处理。在本文中,我们提出了一种基于稀疏核的在线时间序列预测算法。在经典的内核方法中,内核函数数非常大,这使其计算成本很高,并且仅适用于离线或批处理学习。在在线学习设置中,当获取每个训练样本时将更新学习系统,并且需要更高的计算速度。为了使内核方法适合于在线学习,我们提出了一种基于系统损失函数的Hessian矩阵的稀疏化方法,以不断检查新训练样本的重要性,从而选择稀疏字典(支持向量集)。 Hessian矩阵等效于使用递归最小二乘(RLS)算法在内核权重更新中样本输入的相关矩阵。这使得该算法能够以可承受的计算成本轻松实现,以用于实时应用程序。实验结果证明了该算法在现实世界和人工时间序列数据预测中的能力。

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