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Discovering trading rules with genetic algorithms: an empirical study based on GARCH time series

机译:用遗传算法发现交易规则:基于GARCH时间序列的实证研究

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In this paper, the performance of canonical GA-based trading strategies are euvaluated under a well-known nonlinear time seris in finance, namely, the GARCH process. Unlike many existing applications of computational intelligence in financial engineering, for each performance criterion, we provide a rigorous asymptotic statistical test based on Monte Carol simulation. As a re-sult, this study provides us with a thorough under-standing about the effectiveness ofcanonical GAs for evolving trading strategies under the GARCH financial time series.
机译:在本文中,在金融的众所周知的非线性时间Seris下,Canonical GA的交易策略的性能是Euvalated,即GARCH过程。与金融工程中的计算智能许多现有应用不同,对于每个绩效标准,我们提供了一种基于蒙特卡罗仿真的严格的渐近统计测试。作为一种重新陈腐,本研究为我们提供了一种彻底的态度,即在GARCH金融时间序列下不断变化的交易策略的持续性态度。

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