人工智能在ETF市场预测和投资组合优化中的应用

Min-Yuh Day, Jian-Ting Lin
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引用次数: 12

摘要

在资产配置和时间序列预测研究中,很少有人阐明使用不同的机器学习和深度学习模型来验证投资回报和最优资产配置结果的差异。为了填补这一研究空白,我们开发了一个具有不同机器学习和深度学习预测方法的机器人顾问,并利用投资组合优化模型的预测结果来支持我们的投资者做出决策。这项研究整合了几个维度的技术,包括机器学习、数据分析和投资组合优化。我们专注于开发机器人顾问框架,并利用算法将机器学习和深度学习方法与投资组合优化算法相结合,使用我们预测的趋势和结果来取代历史数据和投资者的观点。我们消除极端波动,以保持我们的交易在可接受的风险系数。因此,我们可以将投资风险降到最低,并获得相对稳定的回报。我们比较了不同的算法,发现模型预测的F1分数显著影响优化投资组合的结果。我们使用了胜率最高的深度学习模型,并将预测结果与投资组合优化算法相结合,达到了12%的年回报率,超过了基准指数0050。TW和整合历史数据的优化投资组合。
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Artificial Intelligence for ETF Market Prediction and Portfolio Optimization
In asset allocation and time-series forecasting studies, few have shed light on using the different machine learning and deep learning models to verify the difference in the result of investment returns and optimal asset allocation. To fill this research gap, we develop a robo-advisor with different machine learning and deep learning forecasting methodologies and utilize the forecasting result of the portfolio optimization model to support our investors in making decisions. This research integrated several dimensions of technologies, which contain machine learning, data analytics, and portfolio optimization. We focused on developing robo-advisor framework and utilized algorithms by integrating machine learning and deep learning approaches with the portfolio optimization algorithm by using our predicted trends and results to replace the historical data and investor views. We eliminate the extreme fluctuation to maintain our trading within the acceptable risk coefficient. Accordingly, we can minimize the investment risk and reach a relatively stable return. We compared different algorithms and found that the F1 score of the model prediction significantly affects the result of the optimized portfolio. We used our deep learning model with the highest winning rate and leveraged the prediction result with the portfolio optimization algorithm to reach 12% of annual return, which outperform our benchmark index 0050. TW and the optimized portfolio with the integration of historical data.
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