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Genetic programming based approach for modeling time series data of real systems

机译:基于遗传编程的真实系统时间序列数据建模方法

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摘要

Analytic models of a computer generated time series (logistic map) and three real time series (ion saturation current in Aditya Tokamak plasma, NASDAQ composite index and Nifty index) are constructed using Genetic Programming (GP) framework. In each case, the optimal map that results from fitting part of the data set also provides a very good description of the rest of the data. Predictions made using the map iteratively are very good for computer generated time series but not for the data of real systems. For such cases, an extended GP model is proposed and illustrated. A comparison of these results with those obtained using Artificial Neural Network (ANN) is also carried out.
机译:使用遗传编程(GP)框架构建了计算机生成的时间序列(逻辑图)和三个实时序列(阿迪亚·托卡马克等离子体中的离子饱和电流,纳斯达克综合指数和Nifty指数)的分析模型。在每种情况下,由拟合数据集的一部分得出的最优图也可以很好地描述其余数据。迭代地使用地图进行的预测对于计算机生成的时间序列非常有用,但对于实际系统的数据却不是。对于这种情况,提出并说明了扩展的GP模型。还对这些结果与使用人工神经网络(ANN)获得的结果进行了比较。

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