ETF市场的预测基于概率自回归递归网络的资产管理平台

Waleed Mahmoud SOLIMAN, Zhiyuan CHEN, Colin JOHNSON, Sabrina WONG
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引用次数: 0

摘要

宏观经济政策变化对ETF市场和金融市场的影响不容忽视。本研究试图通过结合一组来自不同ETF市场的精选经济指标,并利用概率自回归循环网络(DeepAR)来预测这些市场的未来趋势。经济指标的选择是根据领域专家的建议和相关估计的结果进行的。这些指标随后被分为两类:一类是“美国”指标,描述联邦储备基金利率和量化宽松等美国政策对全球市场的影响;另一类是“特定地区”指标。研究结果表明,“US”指标的加入提高了预测精度,并且DeepAR模型优于LSTM和GRU模型。此外,已经开发了一个网络平台来应用DeepAR模型,使用户能够使用最新数据预测ETF行情机未来15个时间步的趋势。在当前数据过时的情况下,该平台还具有从相应的RESTful API源自动生成新数据集的能力。
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ETF Markets’ Prediction & Assets Management Platform Using Probabilistic Autoregressive Recurrent Networks
The significance of macroeconomic policy changes on ETF markets and financial markets cannot be disre-garded. This study endeavors to predict the future trend of these markets by incorporating a group of selected economic indicators sourced from various ETF markets and utilizing probabilistic autoregressive recurrent net-works (DeepAR). The choice of economic indicators was made based on the advice of a domain expert and the results of correlation estimation. These indicators were then divided into two categories: "US" indicators, which depict the impact of US policies such as the federal reserve fund rate and quantitative easing on the global markets, and "region-specific" indicators. The findings of the study indicate that the inclusion of "US" indicators enhances the prediction accuracy and that the DeepAR model outperforms the LSTM and GRU models. Fur-thermore, a web platform has been developed to apply the DeepAR models, which enables the user to predict the trend of an ETF ticker for the next 15 time-steps using the most recent data. The platform also possesses the capability to automatically generate fresh datasets from corresponding RESTful API sources in case the current data becomes outdated.
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