Market indicators such as CPI and GDP have been widely used over decades to identify the stage of business cycles and also investment attractiveness of sectors given market conditions. In this paper, we propose a two-stage methodology that consists of predicting ETF prices for each sector using market indicators and ranking sectors based on their predicted rate of returns. We initially start with choosing sector specific macroeconomic indicators and implement Recursive Feature Elimination algorithm to select the most important features for each sector. Using our prediction tool, we implement different Recurrent Neural Networks models to predict the future ETF prices for each sector. We then rank the sectors based on their predicted rate of returns. We select the best performing model by evaluating the annualized return, annualized Sharpe ratio, and Calmar ratio of the portfolios that includes the top four ranked sectors chosen by the model. We also test the robustness of the model performance with respect to lookback windows and look ahead windows. Our empirical results show that our methodology beats the equally weighted portfolio performance even in the long run. We also find that Echo State Networks exhibits an outstanding performance compared to other models yet it is faster to implement compared to other RNN models.
翻译:几十年来,消费物价指数和GDP等市场指标被广泛用于确定商业周期的阶段,以及按市场条件对各部门的投资吸引力。在本文件中,我们提出一个两阶段方法,包括利用市场指标预测每个部门ETF的价格,并根据预测的回报率对每个部门进行排名;我们最初从选择部门具体的宏观经济指标开始,并采用Recursial 地貌排除算法为每个部门选择最重要的特征。我们利用我们的预测工具,实施了不同的经常性神经网络模型,以预测每个部门未来的ETF价格。然后,我们根据预测的回报率对各部门进行排名。我们通过评估年度回报率、年度化夏洛比率和组合组合中包括模型所选择的四大排名部门的平稳比率来选择最佳业绩模式。我们还测试模型业绩的稳健性,以回顾窗口和展望前视窗口。我们的经验结果表明,我们的方法甚至在长期里都比同样加权的组合业绩强。我们还发现,“回邦网络”与其他模型相比,其执行的出色业绩比其他模型要快。