We consider a new robust parametric estimation procedure, which minimizes an empirical version of the Havrda-Charvàt-Tsallis entropy. The resulting estimator adapts according to the discrepancy between the data and the assumed model by tuning a single constant q, which controls the trade-off between robustness and effciency. The method is applied to expected return and volatility estimation of financial asset returns under multivariate normality. Theoretical properties, ease of implementability and empirical results on simulated and financial data make it a valid alternative to classic robust estimators and semi-parametric minimum divergence methods based on kernel smoothing.q-entropy; robust estimation; power-divergence; financial returns
The treatment of uncertainties is a fundamental problem in the financial context, and more precisely...
We propose a nonparametric method to determine the functional form of the noise density in discrete...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
We consider a new robust parametric estimation procedure, which minimizes an empirical version of th...
We consider a robust parameter estimator minimizing an empirical approximation to the q-entropy and ...
In this paper, we consider parametric density estimation based on minimizing an empirical version o...
The goal of this PhD Thesis is the definition of new robust estimators, thereby extending the availa...
This thesis covers the parametric estimation of models with stochastic volatility, jumps, and stocha...
In this thesis, we investigate the properties of entropy as an alternative measure of risk. Entropy ...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
Two important problems arising in traditional asset allocation methods are the sensitivity to estima...
We develop a new minimum description length criterion for index tracking, which deals with two main ...
We approach parameter estimation based on power-divergence using Havrda-Charvat generalized entropy....
Using asset prices I estimate the marginal value of capital in a dynamic stochastic economy under ge...
Estimating financial risk is a critical issue for banks and insurance companies. Recently, quantile ...
The treatment of uncertainties is a fundamental problem in the financial context, and more precisely...
We propose a nonparametric method to determine the functional form of the noise density in discrete...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
We consider a new robust parametric estimation procedure, which minimizes an empirical version of th...
We consider a robust parameter estimator minimizing an empirical approximation to the q-entropy and ...
In this paper, we consider parametric density estimation based on minimizing an empirical version o...
The goal of this PhD Thesis is the definition of new robust estimators, thereby extending the availa...
This thesis covers the parametric estimation of models with stochastic volatility, jumps, and stocha...
In this thesis, we investigate the properties of entropy as an alternative measure of risk. Entropy ...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...
Two important problems arising in traditional asset allocation methods are the sensitivity to estima...
We develop a new minimum description length criterion for index tracking, which deals with two main ...
We approach parameter estimation based on power-divergence using Havrda-Charvat generalized entropy....
Using asset prices I estimate the marginal value of capital in a dynamic stochastic economy under ge...
Estimating financial risk is a critical issue for banks and insurance companies. Recently, quantile ...
The treatment of uncertainties is a fundamental problem in the financial context, and more precisely...
We propose a nonparametric method to determine the functional form of the noise density in discrete...
Accounting for the non-normality of asset returns remains challenging in robust portfolio optimizati...