Lag selection for time series forecasting using Particle Swarm Optimization

Gustavo H. T. Ribeiro, P. S. D. M. Neto, George D. C. Cavalcanti, Ing Ren Tsang
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引用次数: 30

Abstract

The time series forecasting is an useful application for many areas of knowledge such as biology, economics, climatology, biology, among others. A very important step for time series prediction is the correct selection of the past observations (lags). This paper uses a new algorithm based in swarm of particles to feature selection on time series, the algorithm used was Frankenstein's Particle Swarm Optimization (FPSO). Many forms of filters and wrappers were proposed to feature selection, but these approaches have their limitations in relation to properties of the data set, such as size and whether they are linear or not. Optimization algorithms, such as FPSO, make no assumption about the data and converge faster. Hence, the FPSO may to find a good set of lags for time series forecasting and produce most accurate forecastings. Two prediction models were used: Multilayer Perceptron neural network (MLP) and Support Vector Regression (SVR). The results show that the approach improved previous results and that the forecasting using SVR produced best results, moreover its showed that the feature selection with FPSO was better than the features selection with original Particle Swarm Optimization.
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基于粒子群算法的时间序列预测滞后选择
时间序列预测在生物学、经济学、气候学、生物学等许多领域都有广泛的应用。时间序列预测的一个非常重要的步骤是正确选择过去的观测值(滞后)。本文提出了一种新的基于粒子群的时间序列特征选择算法,该算法是弗兰肯斯坦粒子群优化算法(FPSO)。人们提出了许多形式的过滤器和包装器来进行特征选择,但是这些方法在数据集的属性方面有其局限性,例如大小和它们是否是线性的。FPSO等优化算法对数据不做任何假设,收敛速度更快。因此,FPSO可能会找到一组很好的滞后时间序列预测,并产生最准确的预测。使用了两种预测模型:多层感知器神经网络(MLP)和支持向量回归(SVR)。结果表明,该方法改进了以往的预测结果,支持向量回归预测效果最好,并且FPSO的特征选择优于原始粒子群算法的特征选择。
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