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A novel evolutionary multi-objective ensemble learning approach for forecasting currency exchange rates

机译:一种新颖的进化多目标集成学习预测货币汇率的方法

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摘要

Due to the potential impact of the (currency) exchange rate risk in the financial market, forecasting exchange rate (FET) has become a hot topic in both academic and practical worlds. For many years, the various methods have been proposed and used for FET problems including the method of the artificial neural network (ANN). However, in many cases of FET, there is the limitation of using separate methods since they are not able to fully capture financial characteristics. Recently, more researchers have been beginning to pay attention to FET based on an ensemble of forecasting models (in other words, the combination of individual methods). Previous studies of ensemble methods have shown that the performance of an ensemble depends on two key elements (1) The individual performance and (2) diversity degree of base learners. The main idea behind this paper comes from these key elements, the authors use ANNs as the base method (or weak learners), and weights of these ANNs will be optimized by using multi objective evolutionary algorithms (MOEAs) including the Non-Dominated Sorting Genetic Algorithm II (NSGA-II) and the Non-Dominated Sorting Differential Evolution (NSDE) using directional information. To assist MOEAs, a number of diversity-preservation mechanisms are used to generate diverse sets of base classifiers and finally we propose to use modified Adaboost algorithms to combine the results of weak learners for overall forecasts. The results show that the proposed novel ensemble learning approach can achieve higher forecasting performance than those of individual ones.
机译:由于(货币)汇率风险对金融市场的潜在影响,预测汇率(FET)已成为学术界和实践界的热门话题。多年来,已经提出了各种方法来解决FET问题,包括人工神经网络(ANN)方法。但是,在FET的许多情况下,使用单独的方法存在局限性,因为它们无法完全捕获财务特征。近来,基于一组预测模型(换句话说,各个方法的组合),越来越多的研究人员开始关注FET。以前对合奏方法的研究表明,合奏的表现取决于两个关键要素:(1)个人表现和(2)基础学习者的多样性程度。本文的主要思想来自这些关键要素,作者使用人工神经网络作为基础方法(或学习能力较弱的人),并将通过使用包括非支配排序遗传算法在内的多目标进化算法(MOEA)优化这些人工神经网络的权重。算法II(NSGA-II)和使用方向信息的非支配排序差分进化(NSDE)。为了协助MOEA,使用了多种多样性保留机制来生成各种基础分类器,最后我们建议使用改进的Adaboost算法来组合弱学习者的结果以进行总体预测。结果表明,提出的新颖的集成学习方法可以实现比单个集成学习方法更高的预测性能。

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