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Enhanced Hybrid Prediction Models for Time Series Prediction

机译:用于时间序列预测的增强型混合预测模型

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摘要

Statistical techniques have disadvantages in handling the non-linear pattern. Soft Computing (SC) techniques such as artificial neural networks are considered to be better for prediction of data with non-linear patterns. In the real-life, time-series data comprise complex pattern, and hence it may be difficult to obtain high prediction accuracy rates using the statistical or SC techniques individually. We propose two enhanced hybrid models for time series prediction. The first model is an enhanced hybrid model combining statistical and neural network techniques. Using this model, one can select the best statistical technique as well as the best configuration for the neural network for time series prediction. The second model is an enhanced adaptive neuro-fuzzy inference system which combines fuzzy inference system and neural network. The proposed enhanced Adaptive Neuro-Fuzzy Inference Systems (ANFIS) model can determine the optimum input lags for obtaining the best accuracy results. The prediction accuracies of the two proposed hybrid models are compared with those obtained with other models based on three time series data sets. The results indicate that the proposed hybrid models yield better accuracy results compared to Autoregressive Integrated Moving Average (ARIMA), exponential smoothing, moving average, weighted moving average and Neural Network models.
机译:统计技术在处理非线性模式方面有缺点。诸如人工神经网络之类的软计算(SC)技术被认为对于具有非线性模式的数据预测更好。在现实生活中,时间序列数据包含复杂的模式,因此可能难以单独使用统计技术或SC技术获得较高的预测准确率。我们提出了两个增强的混合模型用于时间序列预测。第一个模型是结合了统计和神经网络技术的增强型混合模型。使用此模型,可以为时间序列预测选择最佳的统计技术以及神经网络的最佳配置。第二种模型是结合了模糊推理系统和神经网络的增强型自适应神经模糊推理系统。所提出的增强型自适应神经模糊推理系统(ANFIS)模型可以确定最佳输入滞后以获得最佳精度结果。将两个提出的混合模型的预测精度与基于三个时间序列数据集的其他模型的预测精度进行比较。结果表明,与自回归综合移动平均线(ARIMA),指数平滑,移动平均线,加权移动平均线和神经网络模型相比,所提出的混合模型产生了更好的精度结果。

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