peer reviewedWe propose a model selection criterion to detect purely causal from purely noncausal models in the framework of quantile autoregressions (QAR). We also present asymptotics for the i.i.d. case with regularly varying distributed innovations in QAR. This new modelling perspective is appealing for investigating the presence of bubbles in economic and financial time series, and is an alternative to approximate maximum likelihood methods. We illustrate our analysis using hyperinflation episodes of Latin American countries
This paper considers the location-scale quantile autoregression in which the location and scale para...
The mixed autoregressive causal-noncausal model (MAR) has been proposed to estimate economic relatio...
This paper investigates one-step ahead density forecasts of mixed causal-noncausal models. It analys...
We propose a model selection criterion to detect purely causal from purely noncausal models in the f...
Over the last two decades, there has been growing interest among economists in nonfundamental univar...
Theory suggests that physical commodity prices may exhibit nonlinear features such as bubbles and va...
Gouriéroux and Zakoian (2013) propose to use noncausal models to parsimoniously capture nonlinear fe...
This thesis deals with the estimation and forecasting of factor-augmented quantile autoregressive mo...
Gouriéroux and Zakoïan (2013) propose to use noncausal models to parsimoniously capture nonlinear fe...
My thesis focuses on theoretical and empirical aspects of modelling time series during different fin...
Noncausal autoregressive models with heavy-tailed errors generate locally explosive processes and t...
This paper is concerned with univariate noncausal autoregressive models and their potential usefulne...
In this paper, we propose a Bayesian estimation and prediction procedure for noncausal autoregressiv...
This paper considers the location-scale quantile autoregression in which the location and scale para...
The mixed autoregressive causal-noncausal model (MAR) has been proposed to estimate economic relatio...
This paper investigates one-step ahead density forecasts of mixed causal-noncausal models. It analys...
We propose a model selection criterion to detect purely causal from purely noncausal models in the f...
Over the last two decades, there has been growing interest among economists in nonfundamental univar...
Theory suggests that physical commodity prices may exhibit nonlinear features such as bubbles and va...
Gouriéroux and Zakoian (2013) propose to use noncausal models to parsimoniously capture nonlinear fe...
This thesis deals with the estimation and forecasting of factor-augmented quantile autoregressive mo...
Gouriéroux and Zakoïan (2013) propose to use noncausal models to parsimoniously capture nonlinear fe...
My thesis focuses on theoretical and empirical aspects of modelling time series during different fin...
Noncausal autoregressive models with heavy-tailed errors generate locally explosive processes and t...
This paper is concerned with univariate noncausal autoregressive models and their potential usefulne...
In this paper, we propose a Bayesian estimation and prediction procedure for noncausal autoregressiv...
This paper considers the location-scale quantile autoregression in which the location and scale para...
The mixed autoregressive causal-noncausal model (MAR) has been proposed to estimate economic relatio...
This paper investigates one-step ahead density forecasts of mixed causal-noncausal models. It analys...