This paper introduces a parsimonious and yet flexible nonnegative semiparametric model to forecast financial volatility. The new model extends the linear nonnegative autoregressive model of Barndorff-Nielsen & Shephard (2001) and Nielsen & Shephard (2003) by way of a power transformation. It is semiparametric in the sense that the dependency structure and distributional form of its error component are left unspecified. The statistical properties of the model are discussed and a novel estimation method is proposed. Simulation studies validate the new estimation method and suggest that it works reasonably well in finite samples. The out-of-sample performance of the proposed model is evaluated against a number of standard methods, using data o...
Studies in the volatility process of financial markets have focused more on volatility modeling aspe...
Problems of nonparametric filtering arises frequently in engineering and financial economics. Nonpar...
Following the debate by empirical finance research on the presence of non-linear predictability in s...
Abstract. This paper introduces a parsimonious and yet flexible nonnegative semi-parametric model to...
This paper investigates the use of a flexible forecasting method based on non-linear Markov modellin...
This doctoral thesis is comprised of four papers that all relate to the subject of Time Series Analy...
textabstractThe sum of squared intraday returns provides an unbiased and almost error-free measure o...
In this paper, non-linear time series models are used to describe volatility in financial time serie...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
The main aim of this dissertation is to study the prediction of financial returns or squared financi...
We build a discrete-time non-linear model for volatility forecasting purposes. This model belongs to...
Modeling financial volatility is an important part of empirical finance. This paper provides a liter...
This paper sets up a statistical framework for modeling realized volatility (RV) using a Dynamic Con...
This study forecasts the monthly realized volatility of the US stock market covering the period of F...
For over a decade, nonparametric modelling has been successfully applied to study nonlinear structur...
Studies in the volatility process of financial markets have focused more on volatility modeling aspe...
Problems of nonparametric filtering arises frequently in engineering and financial economics. Nonpar...
Following the debate by empirical finance research on the presence of non-linear predictability in s...
Abstract. This paper introduces a parsimonious and yet flexible nonnegative semi-parametric model to...
This paper investigates the use of a flexible forecasting method based on non-linear Markov modellin...
This doctoral thesis is comprised of four papers that all relate to the subject of Time Series Analy...
textabstractThe sum of squared intraday returns provides an unbiased and almost error-free measure o...
In this paper, non-linear time series models are used to describe volatility in financial time serie...
The forecasting ability of the most popular volatility forecasting models is examined and an alterna...
The main aim of this dissertation is to study the prediction of financial returns or squared financi...
We build a discrete-time non-linear model for volatility forecasting purposes. This model belongs to...
Modeling financial volatility is an important part of empirical finance. This paper provides a liter...
This paper sets up a statistical framework for modeling realized volatility (RV) using a Dynamic Con...
This study forecasts the monthly realized volatility of the US stock market covering the period of F...
For over a decade, nonparametric modelling has been successfully applied to study nonlinear structur...
Studies in the volatility process of financial markets have focused more on volatility modeling aspe...
Problems of nonparametric filtering arises frequently in engineering and financial economics. Nonpar...
Following the debate by empirical finance research on the presence of non-linear predictability in s...