Optimal kernel estimation of spot volatility of stochastic differential equations

  • José E. Figueroa-López
  • , Cheng Li

    Research output: Contribution to journalArticlepeer-review

    9 Scopus citations

    Abstract

    A unified framework to optimally select the bandwidth and kernel function of spot volatility kernel estimators is put forward. The proposed models include not only classical Brownian motion driven dynamics but also volatility processes that are driven by long-memory fractional Brownian motions or other Gaussian processes. We characterize the leading order terms of the mean squared error, which in turn enables us to determine an explicit formula for the leading term of the optimal bandwidth. Central limit theorems for the estimation error are also obtained. A feasible plug-in type bandwidth selection procedure is then proposed, for which, as a sub-problem, a new estimator of the volatility of volatility is developed. The optimal selection of the kernel function is also investigated. For Brownian Motion type volatilities, the optimal kernel turns out to be an exponential function, while, for fractional Brownian motion type volatilities, easily implementable numerical results to compute the optimal kernels are devised. Simulation studies further confirm the good performance of the proposed methods.

    Original languageEnglish
    Pages (from-to)4693-4720
    Number of pages28
    JournalStochastic Processes and their Applications
    Volume130
    Issue number8
    DOIs
    StatePublished - Aug 2020

    Keywords

    • Bandwidth selection
    • Kernel estimation
    • Kernel function selection
    • Spot volatility estimation
    • Vol vol estimation

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