scholarly journals Modelling Volatile Time Series with V-Transforms and Copulas

Risks ◽  
2021 ◽  
Vol 9 (1) ◽  
pp. 14
Author(s):  
Alexander J. McNeil

An approach to the modelling of volatile time series using a class of uniformity-preserving transforms for uniform random variables is proposed. V-transforms describe the relationship between quantiles of the stationary distribution of the time series and quantiles of the distribution of a predictable volatility proxy variable. They can be represented as copulas and permit the formulation and estimation of models that combine arbitrary marginal distributions with copula processes for the dynamics of the volatility proxy. The idea is illustrated using a Gaussian ARMA copula process and the resulting model is shown to replicate many of the stylized facts of financial return series and to facilitate the calculation of marginal and conditional characteristics of the model including quantile measures of risk. Estimation is carried out by adapting the exact maximum likelihood approach to the estimation of ARMA processes, and the model is shown to be competitive with standard GARCH in an empirical application to Bitcoin return data.

2006 ◽  
Vol 52 (1) ◽  
pp. 1-10 ◽  
Author(s):  
Oren Barnea ◽  
Andrew R. Solow ◽  
Lewi Stone

Existing methods for fitting a population model to time series data typically assume that the time series is complete. When there are missing values, it is common practice to substitute interpolated values. When the proportion of values that are missing is large, this can lead to bias in model-fitting. Here, we describe a maximum likelihood approach that allows explicitly for missing values. The approach is applied to a long weekly time series of the dinoflagellate Peridinium gatunense in Lake Kinneret, Israel, in which around 35% of the values are missing.


2006 ◽  
Author(s):  
S. Matsunaga ◽  
S. Sakaguchi ◽  
M. Yamashita ◽  
S. Miyahara ◽  
S. Nishitani ◽  
...  

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