...
首页> 外文期刊>The European journal of finance >Subtle is the Lord, but malicious He is not: the calculation of abnormal stock returns in applied research
【24h】

Subtle is the Lord, but malicious He is not: the calculation of abnormal stock returns in applied research

机译:微妙的是上帝,但恶意的不是上帝:应用研究中异常股票收益的计算

获取原文
获取原文并翻译 | 示例
           

摘要

We use the expected logarithmic returns formula for the Geometric Brownian Motion (GBM) in conjunction with the expected logarithmic returns formula for the Feller diffusion to illustrate the nature and magnitude of errors which arise in computed abnormal returns when one applies an expected logarithmic returns formula which is incompatible with the stochastic process that generates a stock's returns. Empirical analysis based on FTSE 100 stock price data for the five year period ending in 2017 shows that the scale of the errors in computed abnormal returns will hinge on the volatility of the returns generating process but will be particularly pronounced for relatively low stock prices. Although our principal focus is with comparing abnormal returns on the GBM and Feller diffusion, we also simulate logarithmic returns for the Uhlenbeck and Ornstein (1930) process, several interpretations of the Constant Elasticity of Variance (CEV) process and the scaled 't' process of Praetz (1972) and Blattberg and Gonedes (1974). Taken in conjunction with the GBM and the Feller diffusion, these processes underpin virtually every equilibrium based asset pricing model which appears in the literature. However, computing abnormal returns for any of these processes using the expected logarithmic returns formula for the GBM inevitably leads to errors in the abnormal returns. Hence, an important principle which emerges from our analysis is that it is crucially important for researchers and others to test the compatibility of empirically observed returns with the distributional assumptions on which the empirical analysis is based if the complications arising from mis-specified modelling procedures are to be avoided.
机译:我们将几何布朗运动(GBM)的期望对数收益公式与Feller扩散的期望对数收益公式结合使用,以说明当人们应用期望对数收益公式时,计算出的异常收益所产生的误差的性质和大小。与产生股票收益的随机过程不相容。基于截至2017年的五年内FTSE 100股票价格数据的经验分析表明,计算出的异常收益中误差的规模将取决于收益产生过程的波动性,但对于相对较低的股价而言尤其明显。尽管我们的主要重点是比较GBM和Feller扩散的异常收益,但我们还模拟了Uhlenbeck和Ornstein(1930)过程的对数收益,方差常数弹性(CEV)过程和规模化“ t”过程的几种解释Praetz(1972)和Blattberg and Gonedes(1974)的作品。结合GBM和Feller扩散,这些过程实际上支撑了文献中出现的每个基于均衡的资产定价模型。但是,使用GBM的预期对数收益公式来计算任何这些过程的异常收益不可避免地会导致异常收益的错误。因此,从我们的分析中得出的一个重要原则是,对于研究人员和其他人来说,测试由实证分析得出的收益与以错误指定的建模程序引起的复杂性为基础进行实证分析的分布假设的相容性至关重要。要避免。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号