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A Genetic Algorithm to Optimize Lazy Learning Parameters for the Prediction of Customer Demands

机译:遗传算法优化懒惰学习参数预测客户需求

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The prediction of time series is an important task both in academic research and in industrial applications. Firstly, an appropriate prediction method has to be chosen. Subsequently, the parameters of this prediction method have to be adjusted to the time series evolution. In particular, an accurate prediction of future customer demands is often difficult, due to several static and dynamic influences. As a promising prediction method, we propose a lazy learning algorithm based on phase space reconstruction and k-nearest neighbor search. This algorithm originates from chaos theory and nonlinear dynamics. In contrast to widely used linear prediction methods like the Box-Jenkins ARIMA method or exponential smoothing, this method is appropriate to reconstruct additional influences on the time series data and consider these influences within the prediction. However, in order to adjust the parameters of the prediction method to the observed time series evolution, a reasonable optimization algorithm is required. In this paper, we present a genetic algorithm for parameter optimization. In this way, the prediction method is automatically fitted accurately and quickly to observed time series data, in order to predict future values. The performance of the genetic algorithm is evaluated by an application to different time series of customer demands in production networks. The results show that the genetic algorithm is appropriate to find suitable parameter configurations. In addition, the prediction results indicate an improved forecasting accuracy of the proposed prediction algorithm compared to linear standard methods.
机译:时间序列的预测是学术研究和工业应用中的重要任务。首先,必须选择适当的预测方法。随后,必须将该预测方法的参数调整为时间序列演化。特别地,由于多种静态和动态影响,通常很难准确预测未来的客户需求。作为一种有前途的预测方法,我们提出了一种基于相空间重构和k最近邻搜索的惰性学习算法。该算法源于混沌理论和非线性动力学。与Box-Jenkins ARIMA方法或指数平滑等广泛使用的线性预测方法相反,此方法适合于重建对时间序列数据的其他影响并在预测中考虑这些影响。但是,为了将预测方法的参数调整为观察到的时间序列演变,需要一种合理的优化算法。在本文中,我们提出了一种用于参数优化的遗传算法。以此方式,将预测方法自动准确,快速地拟合到观察到的时间序列数据中,以预测将来的值。遗传算法的性能通过对生产网络中客户需求的不同时间序列的应用程序进行评估。结果表明,遗传算法适合找到合适的参数配置。此外,与线性标准方法相比,预测结果表明所提出的预测算法的预测精度有所提高。

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