Robust Estimation and Inference for Time-varying Unconditional Volatility

Speaker:  Genaro Sucarrat - BI Norwegian Business School
  Wednesday, September 28, 2022 at 12:00 PM In presenza + Zoom Webinar.

The unconditional volatility of financial return is often time-varying. To model this, a common approach is to decompose the volatility σt2 multiplicatively into a non-stochastic process gt, and a de-volatilitised stochastic process ht: σt2 = gtht. We prove the consistency and asymptotic normality of the single-step Quasi Maximum Likelihood Estimator (QMLE) of the parameters of gt for a large class of specifications of gt. Next, we derive a simple but robust and consistent estimator of the asymptotic coefficient covariance. The exact specification of ht need not be estimated or known, and ht can even be non-stationary in the distribution. This is important in empirical applications, since financial returns are frequently characterised by a non-stationary zero-process. Next, we derive a period-by-period estimator of time-varying periodic unconditional volatility. Due to the assumptions we rely upon, our results extend directly to the Multiplicative Error Model (MEM) interpretation of volatility models. So our results can also be applied to the modelling of the time-varying unconditional mean of non-negative processes (e.g. volume, duration, realised volatility, dividends and unemployment). Three applications illustrate our results.

Zoom link: https://univr.zoom.us/j/81340844866

Title Format  (Language, Size, Publication date)
Paper  pdfpdf (en, 713 KB, 27/09/22)

Programme Director
Roberto Renò

External reference
Publication date
September 27, 2022

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