模拟股市回报的概率分布--实证研究

IF 2.1 Q2 BUSINESS, FINANCE International Journal of Financial Studies Pub Date : 2024-05-06 DOI:10.3390/ijfs12020043
Jayanta K. Pokharel, Gokarna Aryal, Netra Khanal, Chris P. Tsokos
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引用次数: 0

摘要

投资股票是一种常见的策略,在追求潜在收益的同时,还要考虑未来的财务需求,如退休和子女教育。要有效管理投资风险,就必须对股市回报进行全面分析,并做出明智的预测。传统模型通常利用正态方差分布来描述这些回报。然而,股市收益往往偏离正态性,表现出偏斜、峰度较大、尾部较重和中心较明显等特征。本文研究了拉普拉斯分布及其广义形式,包括非对称拉普拉斯、偏斜拉普拉斯和库马拉斯瓦米拉普拉斯分布,以建立股市收益模型。我们的分析包括与广泛使用的方差-伽马分布进行比较研究,评估它们与标准普尔 500 指数及其 11 个商业板块每周收益率的拟合程度,并从新兴经济体和发达经济体的 IBOVESPA 和 KOSPI 等国际股市指数以及 20 年以上国债 ETF 和个股的不同时间跨度中得出平行推论。实证研究结果表明,库马拉斯瓦米拉普拉斯分布性能优越,是精确预测回报和有效降低投资风险的可靠替代方案。
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Probability Distributions for Modeling Stock Market Returns—An Empirical Inquiry
Investing in stocks and shares is a common strategy to pursue potential gains while considering future financial needs, such as retirement and children’s education. Effectively managing investment risk requires thoroughly analyzing stock market returns and making informed predictions. Traditional models often utilize normal variance distributions to describe these returns. However, stock market returns often deviate from normality, exhibiting skewness, higher kurtosis, heavier tails, and a more pronounced center. This paper investigates the Laplace distribution and its generalized forms, including asymmetric Laplace, skewed Laplace, and the Kumaraswamy Laplace distribution, for modeling stock market returns. Our analysis involves a comparative study with the widely-used Variance-Gamma distribution, assessing their fit with the weekly returns of the S&P 500 Index and its eleven business sectors, drawing parallel inferences from international stock market indices like IBOVESPA and KOSPI for emerging and developed economies, as well as the 20+ Years Treasury Bond ETFs and individual stocks across varied time horizons. The empirical findings indicate the superior performance of the Kumaraswamy Laplace distribution, which establishes it as a robust alternative for precise return predictions and efficient risk mitigation in investments.
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
100
审稿时长
11 weeks
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