International audienceThis paper introduces the class of quasi score-driven (QSD) models. This new class inherits and extends the basic ideas behind the development of score-driven (SD) models and addresses a number of unsolved issues in the score literature. In particular, the new class of models (i) generalizes many existing models, including SD models, (ii) disconnects the updating equation from the log-likelihood implied by the conditional density of the observations, (iii) allows testing of the assumptions behind SD models that link the updating equation of the conditional moment to the conditional density, (iv) allows QML estimation of SD models, (v) and allows explanatory variables to enter the updating equation. We establish the asy...
In this paper we introduce three natural "score statistics" for testing the hypothesis that F(t_0)ta...
This article proposes a novel Pearson-type quasi-maximum likelihood estimator (QMLE) of GARCH(p, q) ...
We introduce new dynamic conditional score (DCS) models with time-varyinglocation, scale and shape p...
[[abstract]]In quasi-likelihood model, we propose the quasi-score statistic to establish test proced...
We study the properties of the quasi-maximum likelihood estimator (QMLE) and related test statistics...
A new semiparametric observation-driven volatility model is proposed. In contrast to the standard se...
In this paper, we introduce a new model by extending the dynamic conditional score(DCS) model of the...
This paper sets up a statistical framework for modeling realized volatility (RV) using a Dynamic Con...
We propose a new class of dynamic patent count panel data models that is based on dynamic condition...
Abstract. In this paper we consider some aspects of quasi-likelihood methods used in estimation of p...
We study co-integration and common trends for time series variables, by introducing a new nonlinear ...
In this paper, we introduce Beta-t-QVAR (quasi-vector autoregression) for the joint modelling of sco...
This paper proposes a novel Pearson-type quasi maximum likelihood estimator (QMLE) of GARCH($p, q$) ...
In this paper we introduce three natural ``score statistics" for testing the hypothesis that F(t_0)t...
This paper suggests new Dynamic Conditional Score (DCS) count panel data models. We compare the stat...
In this paper we introduce three natural "score statistics" for testing the hypothesis that F(t_0)ta...
This article proposes a novel Pearson-type quasi-maximum likelihood estimator (QMLE) of GARCH(p, q) ...
We introduce new dynamic conditional score (DCS) models with time-varyinglocation, scale and shape p...
[[abstract]]In quasi-likelihood model, we propose the quasi-score statistic to establish test proced...
We study the properties of the quasi-maximum likelihood estimator (QMLE) and related test statistics...
A new semiparametric observation-driven volatility model is proposed. In contrast to the standard se...
In this paper, we introduce a new model by extending the dynamic conditional score(DCS) model of the...
This paper sets up a statistical framework for modeling realized volatility (RV) using a Dynamic Con...
We propose a new class of dynamic patent count panel data models that is based on dynamic condition...
Abstract. In this paper we consider some aspects of quasi-likelihood methods used in estimation of p...
We study co-integration and common trends for time series variables, by introducing a new nonlinear ...
In this paper, we introduce Beta-t-QVAR (quasi-vector autoregression) for the joint modelling of sco...
This paper proposes a novel Pearson-type quasi maximum likelihood estimator (QMLE) of GARCH($p, q$) ...
In this paper we introduce three natural ``score statistics" for testing the hypothesis that F(t_0)t...
This paper suggests new Dynamic Conditional Score (DCS) count panel data models. We compare the stat...
In this paper we introduce three natural "score statistics" for testing the hypothesis that F(t_0)ta...
This article proposes a novel Pearson-type quasi-maximum likelihood estimator (QMLE) of GARCH(p, q) ...
We introduce new dynamic conditional score (DCS) models with time-varyinglocation, scale and shape p...