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Financial time series prediction using hybrids of chaos theory, multi-layer perceptron and multi-objective evolutionary algorithms

机译:使用混沌理论的杂种,多层意志和多目标进化算法预测金融时间序列预测

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摘要

Financial Time Series Prediction is a complex and a challenging problem. In this paper, we propose two 3-stage hybrid prediction models wherein Chaos theory is used to construct phase space (Stage-1) followed by invoking Multi-Layer Perceptron (MLP) (Stage-2) and Multi-Objective Particle Swarm Optimization (MOPSO) / elitist Non-dominated Sorting Genetic Algorithm (NSGA-II) (Stage-3) in tandem. In both of these hybrid models, Stage-3 improves the prediction yielded by stage-2. The effectiveness of the proposed models is tested on financial datasets including the exchange rates data of US Dollar (USD) versus Japanese Yen (JPY), British Pound (GBP), Euro (EUR), and Gold price in terms of USD. From the results, it is concluded that Chaos+MLP +NSGA-II hybrid yielded better predictions than the other three-stage hybrid models: Chaos+MLP+MOPSO and Chaos+MLP+PSO, and Two-stage hybrid models: Chaos+PSO, Chaos+MOPSO and Chaos+NSGA-II in terms of both Mean Squared Error (MSE) and Directional Change Statistic (Dstat). Theirs inequality coefficient computed also confirms the superiority of the Chaos+MLP+NSGA-II hybrid over the Chaos+MLP+MOPSO across all datasets. Finally, Diebold-Mariano test indicates that the performance of Chaos+MLP+NSGA-II hybrid is statistically significant than the Chaos+MLP+MOPSO and other hybrids across all datasets. The results of these models are also compared with the two-stage hybrids found in literature [1,2] (Pradeepkumar and Ravi, 2014, 2017). These results are encouraging and suggest further application of these hybrids to other financial and scientific time series prediction problems in the future.
机译:金融时序序列预测是一个复杂的问题和一个具有挑战性的问题。在本文中,我们提出了两个3级混合预测模型,其中混沌理论用于构建相位空间(阶段-1),然后调用多层Perceptron(MLP)(第2阶段)和多目标粒子群优化( MOPSO)/ Elitist非主导的分类遗传算法(NSGA-II)(NSGA-II)(第3级)串联。在这两个混合模型中,阶段-3改善了阶段-2所产生的预测。拟议模型的有效性在金融数据集上进行了测试,包括美元(USD)与日元(JPY),英镑(GBP),欧元(EUR)和黄金价格的汇率数据。从结果中,结论是,混沌+ MLP + NSGA-II杂交机比其他三阶段混合模型更好地预测:CHAOS + MLP + MOPSO和混沌+ MLP + PSO,以及两级混合模型:混沌+ PSO ,Chaos + MOPSO和Chaos + NSGA-II在均方的平均误差(MSE)和定向变化统计(DSTAT)方面。它们的不平等系数计算还在所有数据集中证实了在混沌+ MLP + MOPSO上的混沌+ MLP + NSGA-II混合的优越性。最后,Diebold-Mariano测试表明混沌+ MLP + NSGA-II混合动力车的性能比所有数据集的混沌+ MLP + MOPSO和其他混合动力在统计上显着。这些模型的结果也与文献中发现的两级杂种(Pradeepumar和Ravi,2017,2017)进行了比较。这些结果令人鼓舞,并建议将这些杂种的进一步应用于未来的其他金融和科学时间序列预测问题。

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