In this talk, we introduce a newly developed quantile function model that can be used for estimating conditional distributions of financial returns and for obtaining multi-step ahead out-of-sample predictive distributions of financial returns. Since we forecast the whole conditional distributions, any predictive quantity of interest about the future financial returns can be obtained simply as a by-product of the method. We also show an application of the model to the daily closing prices of Dow Jones Industrial Average (DJIA) series over the period from 2 January 2004 - 8 October 2010. We obtained the predictive distributions up to 15 days ahead for the DJIA returns, which were further compared with the actually observed returns and those p...
We model the conditional distribution of high-frequency financial returns by means of a two-componen...
Quantile forecasts are central to risk management decisions because of the widespread use of Value-a...
This paper presents a new approach to estimating the conditional probability distribution of multipe...
We introduce a newly developed quantilefunction model that can be used for estimating conditionaldis...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
This paper presents a new approach to estimating the conditional probability distribution of multipe...
This paper investigates how the conditional quantiles of future returns and volatility of financial ...
We develop a novel quantile double autoregressive model for modelling financial time series. This is...
We introduce a nonparametric quantile predictor for multivariate time series via generalizing the we...
International audienceWe consider an inference method for prediction based on belief functions in qu...
Quantile forecasts are central to risk management decisions because of the widespread use of Value-a...
This paper analyses the predictive power of the DJIA index returns, measured at different quantiles ...
Most downside risk models implicitly assume that returns are a sufficient statistic with which to fo...
This thesis investigates forecasting performance of Quantile Regression Neural Networks in forecasti...
This master thesis focuses on the problem of forecasting volatility and Value-at-Risk (VaR) in the n...
We model the conditional distribution of high-frequency financial returns by means of a two-componen...
Quantile forecasts are central to risk management decisions because of the widespread use of Value-a...
This paper presents a new approach to estimating the conditional probability distribution of multipe...
We introduce a newly developed quantilefunction model that can be used for estimating conditionaldis...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
This paper presents a new approach to estimating the conditional probability distribution of multipe...
This paper investigates how the conditional quantiles of future returns and volatility of financial ...
We develop a novel quantile double autoregressive model for modelling financial time series. This is...
We introduce a nonparametric quantile predictor for multivariate time series via generalizing the we...
International audienceWe consider an inference method for prediction based on belief functions in qu...
Quantile forecasts are central to risk management decisions because of the widespread use of Value-a...
This paper analyses the predictive power of the DJIA index returns, measured at different quantiles ...
Most downside risk models implicitly assume that returns are a sufficient statistic with which to fo...
This thesis investigates forecasting performance of Quantile Regression Neural Networks in forecasti...
This master thesis focuses on the problem of forecasting volatility and Value-at-Risk (VaR) in the n...
We model the conditional distribution of high-frequency financial returns by means of a two-componen...
Quantile forecasts are central to risk management decisions because of the widespread use of Value-a...
This paper presents a new approach to estimating the conditional probability distribution of multipe...