Improvized implied volatility function and nonparametric approach to unbiased estimation

IF 0.6 Q4 BUSINESS, FINANCE
Muhammad Atif Sattar, Z. Hailiang, Samra Kanwal, B. Gardi
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引用次数: 0

Abstract

The purpose of this paper is to assess unbiased options pricing predictions via ad hoc Black–Scholes model approaches. This paper investigates a number of technical issues when fitted values of implied volatility from linear regression are plugged into the Black–Scholes model, which leads to biased estimation. First, the study observes that the implied volatility linear regression can yield a negative outcome, which is meaningless. Therefore, a logarithmic transformation is applied to the linear function to ensure that the forecast is positive. Second, the retransformation from log to original metric to fitted values of implied volatility and the nonlinearity of Black–Scholes to implied volatility yields biased forecasts. A smearing technique has been applied in this study to correct this bias. Finally, the smearing estimation method also provides biased results if there is heteroscedasticity in the OLS estimation residuals. This study applies the weighted least square regression technique in order to avoid heteroscedasticity. According to the performance measures such as mean bias (MB), mean absolute error (MAE) and mean absolute relative error, the study concludes that the smearing method is the most effective to correct the bias in ad hoc Black–Scholes approaches as well as that an absolute smile approach is better than a relative smile approach without the smearing technique, but with smearing methods, relative smile performs superior to absolute.
简易隐含波动率函数与非参数无偏估计方法
本文的目的是通过特别的Black-Scholes模型方法来评估无偏期权定价预测。本文研究了当线性回归的隐含波动率拟合值插入Black-Scholes模型时的一些技术问题,这些问题会导致有偏估计。首先,研究发现隐含波动率线性回归会产生负的结果,这是没有意义的。因此,对线性函数进行对数变换以确保预测结果为正。其次,从对数到原始度量再转换到隐含波动率的拟合值,以及Black-Scholes到隐含波动率的非线性,产生有偏差的预测。在本研究中应用了涂抹技术来纠正这种偏差。最后,如果OLS估计残差存在异方差,则涂抹估计方法也会产生偏倚结果。为了避免异方差,本研究采用加权最小二乘回归技术。根据平均偏差(MB)、平均绝对误差(MAE)和平均绝对相对误差等性能度量,研究得出涂抹方法对特别Black-Scholes方法的偏差校正效果最好,绝对微笑方法优于没有涂抹技术的相对微笑方法,但涂抹方法的相对微笑效果优于绝对微笑方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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