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Variance Minimization Least Squares Support Vector Machines for Time Series Analysis

机译:方差最小化最小二乘支持向量机的时间序列分析

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Here we propose a novel machine learning method for time series forecasting which is based on the widely-used Least Squares Support Vector Machine (LS-SVM) approach. The objective function of our method contains a weighted variance minimization part as well. This modification makes the method more efficient in time series forecasting, as this paper will show. The proposed method is a generalization of the well-known LS-SVM algorithm. It has similar advantages like the applicability of the kernel-trick, it has a linear and unique solution, and a short computational time, but can perform better in certain scenarios. The main purpose of this paper is to introduce the novel Variance Minimization Least Squares Support Vector Machine (VMLS-SVM) method and to show its superiority through experimental results using standard benchmark time series prediction datasets.
机译:在这里,我们提出了一种新的机器学习方法,用于时间序列预测基于广泛使用的最小二乘支持向量机(LS-SVM)方法。我们的方法的目标函数也包含一个加权方差最小化部分。这种修改使得该方法在时间序列预测中更有效,因为本文将显示。该方法是众所周知的LS-SVM算法的概括。它具有与内核诀窍的适用性相似的优势,它具有线性和唯一的解决方案以及短的计算时间,但可以在某些情况下表现更好。本文的主要目的是引入新颖的方差最小化最小化最小二乘支持向量机(VMLS-SVM)方法,并通过使用标准基准时间序列预测数据集来显示其优越性。

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