Algorithm Design for Asset Trading Under Multiple Factors

Li-Jun Xu, Shou-Yu Wei, Xiao-Qing Lu, Ze-Hua He, Jia-Ming Zhu
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引用次数: 1

Abstract

For the strategy of investing in gold and Bitcoin, first collect the historical prices of two types of investment products in the market, and use the wavelet neural network model and WT-LSTM model to model and analyze to predict the future price trends of gold and Bitcoin. Second, considering the difference in price fluctuations between gold and Bitcoin, based on the GARCH-EVT model to increase the risk uncertainty of financial assets, proposes how to achieve the best trading strategy under risk characteristics. Finally, considering the influence of transaction rate on income, we use particle swarm algorithm and genetic algorithm to study what kind of transaction rate can achieve maximum income. The study found that although traders can predict future trends based on daily price changes, due to the different risk factors of gold and Bitcoin, and the different sensitivity of the two financial assets to transaction costs, trading strategies will be very different.
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多因素下资产交易的算法设计
对于黄金和比特币的投资策略,首先收集市场上两类投资产品的历史价格,并使用小波神经网络模型和WT-LSTM模型进行建模和分析,预测黄金和比特币未来的价格趋势。其次,考虑到黄金和比特币价格波动的差异,基于GARCH-EVT模型增加金融资产的风险不确定性,提出如何在风险特征下实现最佳交易策略。最后,考虑到交易率对收益的影响,我们使用粒子群算法和遗传算法研究了什么样的交易率可以获得最大收益。研究发现,尽管交易者可以根据每日价格变化预测未来趋势,但由于黄金和比特币的风险因素不同,以及这两种金融资产对交易成本的敏感度不同,交易策略会有很大差异。
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