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Multi-peak Algorithmic Trading Strategies Using Grey Wolf Optimizer

机译:使用灰狼优化器的多峰算法交易策略

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In this paper, we propose a new method of algorithmic trading for short term investors in the financial markets, by applying swarm intelligence. We apply a well known meta-heuristic, known as Grey Wolf Optimizer (GWO), and find multi-peak optimisation solutions having different expected risk and return ratios, to propose 3 automated trading strategies. The novelty of our method is how we leverage three best swarm agents to construct multi-peak solutions that are best suited for the stochastic nature of financial markets. We utilise the variance between the positions of swarm agents in GWO to construct different algorithmic approaches to day trading, with an aim to diversify expected portfolio volatility. Our research showcases how the three best swarms of GWO are best suited to predict stochastic time series problems, as we typically find in the field of finance. Our experiments demonstrate the capability of our model compared to industry benchmark indices and evaluates the effectiveness of the proposed strategies.
机译:在本文中,我们通过应用群体智能提出了金融市场的短期投资者算法交易的新方法。我们应用了一个众所周知的元启发式,称为灰狼优化器(GWO),并找到具有不同预期风险和返回比率的多峰优化解决方案,以提出3个自动交易策略。我们的方法的新颖性是我们如何利用三个最佳的群代理来构建最适合金融市场随机性质的多功率解决方案。我们利用了GWO中的群体代理的位置之间的差异来构建日常交易的不同算法方法,旨在使预期的组合波动性多样化。我们的研究展示了如何最适合预测随机时间序列问题的三种最佳的GWO,因为我们通常在金融领域找到。我们的实验表明,与工业基准指标相比,我们的模型能力和评估了拟议策略的有效性。

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