回到未来贝塔:美国和东南亚市场的实证资产定价

J. French
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引用次数: 11

摘要

该研究增加了对使用未来数据预测未来收益的预测能力的实证展望。传统的资本资产定价模型(CAPM)方法的关键是使用历史数据来计算贝塔系数。本研究使用一系列的广义自回归条件异方差(GARCH)模型,不同的滞后和参数项,以预测市场的方差在beta公式的分母中使用。在时变的beta计算中,假设投资组合的协方差和市场收益保持不变。数据跨度为2005年1月3日至2014年12月29日。为了保证稳健性,我们使用了10个不同投资组合的一个10年、两个5年和三个3年样本期。样本外预测采用平均绝对误差(MAE)和均方预测误差(MSE)对GARCH模型、人工神经网络模型和标准市场事后模型的预测能力进行比较。发现时变的MGARCH和SGARCH beta在样本外测试中的表现优于其他事前模型。虽然最简单的方法,常数事后beta,在这个实证研究中表现良好或更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Back to the Future Betas: Empirical Asset Pricing of US and Southeast Asian Markets
The study adds an empirical outlook on the predicting power of using data from the future to predict future returns. The crux of the traditional Capital Asset Pricing Model (CAPM) methodology is using historical data in the calculation of the beta coefficient. This study instead uses a battery of Generalized Auto Regressive Conditional Heteroskedasticity (GARCH) models, of differing lag and parameter terms, to forecast the variance of the market used in the denominator of the beta formula. The covariance of the portfolio and market returns are assumed to remain constant in the time-varying beta calculations. The data spans from 3 January 2005 to 29 December 2014. One ten-year, two five-year, and three three-year sample periods were used, for robustness, with ten different portfolios. Out of sample forecasts, mean absolute error (MAE) and mean squared forecast error (MSE) were used to compare the forecasting ability of the ex-ante GARCH models, Artificial Neural Network, and the standard market ex-post model. Find that the time-varying MGARCH and SGARCH beta performed better with out-of-sample testing than the other ex-ante models. Although the simplest approach, constant ex-post beta, performed as well or better within this empirical study.
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