This work studies wavelet-based Whittle estimator of the Fractionally Integrated Exponential Generalized Autoregressive Conditional Heteroscedasticity (FIEGARCH) model, often used for modeling long memory in volatility of financial assets. The newly proposed estimator approximates the spectral density using wavelet transform, which makes it more robust to certain types of irregularities in data. Based on an extensive Monte Carlo study, both behaviour of the proposed estimator and its relative performance with respect to traditional estimators are assessed. In addition, we study properties of the estimators in presence of jumps, which brings interesting discussion. We find that wavelet-based estimator may become an attractive robust and fast...
We study nonparametric estimation of the volatility function of a diffusion process from discrete da...
We consider the properties of three estimation methods for integrated volatility, i.e. realized vola...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and poo...
ii Abstract This thesis focuses on one of the attractive topics of current financial literature, the...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
Cette thèse fait appel à la théorie des ondelettes pour estimer le paramètre de mémoire longue dans ...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
Fund and other investments often exhibit longer run volatility associated with macroeconomic or othe...
We introduce wavelet-based methodology for estimation of realized variance allowing its measurement ...
This paper revisits the fractional co-integrating relationship between ex-ante implied volatility an...
We consider the properties of three estimation methods for integrated volatility, i.e. realized vola...
Risk of investing in a financial asset is quantified by functionals of squared returns. Discrete tim...
Conventional time series theory and spectral analysis have independently achieved significant popula...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and po...
We study nonparametric estimation of the volatility function of a diffusion process from discrete da...
We consider the properties of three estimation methods for integrated volatility, i.e. realized vola...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and poo...
ii Abstract This thesis focuses on one of the attractive topics of current financial literature, the...
Summary. We present and study the performance of the semiparametric wavelet estimator for the long{m...
Cette thèse fait appel à la théorie des ondelettes pour estimer le paramètre de mémoire longue dans ...
This paper seeks to understand the long memory behaviour of global equity returns using novel method...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
Fund and other investments often exhibit longer run volatility associated with macroeconomic or othe...
We introduce wavelet-based methodology for estimation of realized variance allowing its measurement ...
This paper revisits the fractional co-integrating relationship between ex-ante implied volatility an...
We consider the properties of three estimation methods for integrated volatility, i.e. realized vola...
Risk of investing in a financial asset is quantified by functionals of squared returns. Discrete tim...
Conventional time series theory and spectral analysis have independently achieved significant popula...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and po...
We study nonparametric estimation of the volatility function of a diffusion process from discrete da...
We consider the properties of three estimation methods for integrated volatility, i.e. realized vola...
Outliers in financial data can lead to model parameter estimation biases, invalid inferences and poo...