Portfolio Trading of Financial Products Based on Machine Learning

Yifan Zhang, Qian Shen, Jian Guo, Yiwen Jia
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Abstract

In order to study how to construct a suitable portfolio trading strategy of traditional financial products and new kinds of financial products to help investors avoid risks and obtain more returns, we use pair trading models, polynomial regression models, and a machine learning-based combined model we designed to make a simulated trading. In the simulation of gold and bitcoin trading, our combined model achieved better results and avoided the shortcomings of the pair trading model and the polynomial regression model. We suggest that investors add constraints to the combined model according to the actual situation of financial products, and use it to forecast and make decisions on portfolio tradings.
基于机器学习的金融产品组合交易
为了研究如何构建适合传统金融产品和新型金融产品的组合交易策略,帮助投资者规避风险,获得更多收益,我们使用配对交易模型、多项式回归模型和我们设计的基于机器学习的组合模型进行了模拟交易。在黄金和比特币交易的模拟中,我们的组合模型取得了更好的效果,避免了配对交易模型和多项式回归模型的缺点。我们建议投资者根据理财产品的实际情况,在组合模型中加入约束条件,利用组合模型对投资组合的交易进行预测和决策。
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