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A generalized financial time series forecasting model based on automatic feature engineering using genetic algorithms and support vector machine

机译:基于自动特征工程的遗传算法和支持向量机的广义金融时序预测模型

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We propose the genetic algorithm for time window optimization, which is an embedded genetic algorithm (GA), to optimize the time window (TW) of the attributes using feature selection and support vector machine. This GA is evolved using the results of a trading simulation, and it determines the best TW for each technical indicator. An appropriate evaluation was conducted using a walk-forward trading simulation, and the trained model was verified to be generalizable for forecasting other stock data. The results show that using the GA to determine the TW can improve the rate of return, leading to better prediction models than those resulting from using the default TW.
机译:我们提出了时间窗口优化的遗传算法,它是一种嵌入式遗传算法(GA),用于使用特征选择和支持向量机来优化属性的时间窗口(TW)。使用交易仿真的结果演化该GA,它决定了每个技术指标的最佳TW。使用步行交易仿真进行了适当的评估,验证了训练有素的模型以概括地预测其他库存数据。结果表明,使用GA确定TW可以提高返回率,从而提高更好的预测模型,而不是使用默认的TW。

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