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Volatility estimation from short time series of stock prices

机译:从短时间的股票价格序列估计波动率

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We consider estimation of the historical volatility of stock prices. It is assumed that the stock prices are represented as time series formed as samples of the solution of a stochastic differential equation with random and time-varying parameters; these parameters are not observable directly and have unknown evolution law. The price samples are available with limited frequency only. In this setting, the estimation has to be based on short time series, and the estimation error can be significant. We suggest some supplements to the existing nonparametric methods of volatility estimation. Two modifications of the standard summation formula for the volatility are derived. In addition, a linear transformation eliminating the appreciation rate and preserving the volatility is suggested.
机译:我们考虑对股价历史波动性的估计。假设股票价格表示为时间序列,该时间序列是具有随机和时变参数的随机微分方程解的样本。这些参数不能直接观察到,并且具有未知的演化规律。价格样本仅在有限的频率下提供。在这种设置下,估计必须基于短时间序列,并且估计误差可能很大。我们建议对现有的非参数波动率估计方法进行一些补充。得出了标准求和公式对波动率的两个修改。此外,建议采用线性变换消除升值率并保留波动性。

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