非因果和非可逆 ARMA 模型:股票投资组合中的识别、估计和应用

IF 1.2 4区 数学 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Journal of Time Series Analysis Pub Date : 2024-09-18 DOI:10.1111/jtsa.12776
Alain Hecq, Daniel Velasquez‐Gaviria
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引用次数: 0

摘要

混合因果-非因果可逆-非可逆自回归移动平均(MARMA)模型的优点是可以将根纳入单位圆内,从而调整依赖于未来预期的金融收益动态。本文介绍了估计、识别和模拟 MARMA 模型的新技术。虽然参数估计是使用二阶矩来完成的,但识别依赖于高阶动态的存在,高阶谱密度和残差平方的相关性捕捉到了这一点。一项全面的蒙特卡罗研究证明了我们的估计和识别方法的稳健性能。我们根据规模、市价账面值、盈利能力、投资和动量等因素,对新兴市场的 24 个投资组合进行了实证应用。所有投资组合都表现出前瞻性行为,显示出显著的非因果和非可逆动态。此外,我们发现残差是不相关和独立的,没有条件波动的痕迹。
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Non‐causal and non‐invertible ARMA models: Identification, estimation and application in equity portfolios
The mixed causal‐non‐causal invertible‐non‐invertible autoregressive moving‐average (MARMA) models have the advantage of incorporating roots inside the unit circle, thus adjusting the dynamics of financial returns that depend on future expectations. This article introduces new techniques for estimating, identifying and simulating MARMA models. Although the estimation of the parameters is done using second‐order moments, the identification relies on the existence of high‐order dynamics, captured in the high‐order spectral densities and the correlation of the squared residuals. A comprehensive Monte Carlo study demonstrated the robust performance of our estimation and identification methods. We propose an empirical application to 24 portfolios from emerging markets based on the factors: size, book‐to‐market, profitability, investment and momentum. All portfolios exhibited forward‐looking behavior, showing significant non‐causal and non‐invertible dynamics. Moreover, we found the residuals to be uncorrelated and independent, with no trace of conditional volatility.
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来源期刊
Journal of Time Series Analysis
Journal of Time Series Analysis 数学-数学跨学科应用
CiteScore
2.00
自引率
0.00%
发文量
39
审稿时长
6-12 weeks
期刊介绍: During the last 30 years Time Series Analysis has become one of the most important and widely used branches of Mathematical Statistics. Its fields of application range from neurophysiology to astrophysics and it covers such well-known areas as economic forecasting, study of biological data, control systems, signal processing and communications and vibrations engineering. The Journal of Time Series Analysis started in 1980, has since become the leading journal in its field, publishing papers on both fundamental theory and applications, as well as review papers dealing with recent advances in major areas of the subject and short communications on theoretical developments. The editorial board consists of many of the world''s leading experts in Time Series Analysis.
期刊最新文献
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