基于k近邻(KNN)算法的新冠肺炎期间标准普尔500指数ETF (SPY)预测

Q4 Economics, Econometrics and Finance Universal Journal of Accounting and Finance Pub Date : 2023-05-15 DOI:10.33423/jaf.v23i2.6149
Wenguang Lin, Shengxiong Wu
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引用次数: 0

摘要

本文利用SPY、DIA (SPDR道琼斯工业平均指数ETF信托)和QQQ(景顺纳斯达克-100 ETF信托)在新冠肺炎大流行期间的高低价格,通过KNN方法预测SPY (SPDR标普500 ETF信托)的每日调整收盘价。结果表明,将KNN方法(一种简单、直观、可解释的机器学习方法)应用于COVID-19大流行期间的SPY价格预测和相应的交易决策是可行和有效的。实验还表明,添加来自DIA(价值倾斜ETF)和QQQ(增长倾斜ETF)的高低价格信息并不能提高SPY价格预测和交易决策的准确性。结果与先前基于投资组合方法的发现一致,即价值价差无助于预测股市回报。
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Predicting S&P 500 Index ETF (SPY) During COVID-19 via K-Nearest Neighbors (KNN) Algorithm
In this paper, the daily adjusted closing price of SPY (SPDR S&P 500 ETF Trust) is predicted by using the High-Low prices of SPY, DIA (SPDR Dow Jones Industrial Average ETF Trust), and QQQ (Invesco NASDAQ-100 ETF Trust) via the KNN method during the COVID-19 pandemic period. Results show that applying the KNN method, a simple, intuitive, and explainable machine learning method, is feasible and effective in SPY price prediction and corresponding trade decisions during the COVID-19 pandemic. Experiments also indicate that adding information on High-Low prices from DIA (a value tilt ETF) and QQQ (a growth tilt ETF) cannot improve the accuracy of both SPY price prediction and trading decisions. Results are consistent with previous findings based on the portfolio approach that value spread does not help predict stock market returns.
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Universal Journal of Accounting and Finance
Universal Journal of Accounting and Finance Economics, Econometrics and Finance-Finance
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