We are studying a novel class of goodness-of-fit tests for parametric count time series regression models. These test statistics are formed by considering smoothed versions of the empirical process of the Pearson residuals. Our construction yields test statistics which are consistent against Pitman’s local alternatives and they converge weakly at the usual parametric rate. To approximate the asymptotic null distribution of the test statistics, we propose a parametric bootstrap method and we study its properties. The methodology is applied to simulated and real data
In this article, we looked at power of various versions of Box and Pierce statistic and Cramer von M...
Ce travail est consacré au problème de construction des tests d'ajustement dans le cas des processus...
In this paper we compare the size distortions and powers for Pearson's [chi]2-statistic, likelihood ...
Bivariate count data arise in several different disciplines and the bivariate Poisson distribution i...
This paper proposes omnibus and directional tests for testing the goodness-of-fit of a parametric re...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
A choice of a proper parametric model for a given data is often a crucial question. This thesis deal...
Abstract: A counting process approach to multiple event times modeled by an Andersen-Gill-type exten...
Procedures for testing trends in the intensity functions of nonhomogeneous Poisson processes are bas...
Several diagnostic tests for the lack of fit time series models have been introduced using parametri...
Standard goodness-of-fit tests for a parametric regression model against a series of nonparametric a...
This work presents an alternative derivation of the asymptotic distribution of Ripley's K-function f...
This paper concerns statistical tests for simple structures such as parametric models, lower order m...
This video presents goodness of fit statistics for Poisson regression. It introduces the Pearson and...
In this article, we looked at power of various versions of Box and Pierce statistic and Cramer von M...
Ce travail est consacré au problème de construction des tests d'ajustement dans le cas des processus...
In this paper we compare the size distortions and powers for Pearson's [chi]2-statistic, likelihood ...
Bivariate count data arise in several different disciplines and the bivariate Poisson distribution i...
This paper proposes omnibus and directional tests for testing the goodness-of-fit of a parametric re...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
A choice of a proper parametric model for a given data is often a crucial question. This thesis deal...
Abstract: A counting process approach to multiple event times modeled by an Andersen-Gill-type exten...
Procedures for testing trends in the intensity functions of nonhomogeneous Poisson processes are bas...
Several diagnostic tests for the lack of fit time series models have been introduced using parametri...
Standard goodness-of-fit tests for a parametric regression model against a series of nonparametric a...
This work presents an alternative derivation of the asymptotic distribution of Ripley's K-function f...
This paper concerns statistical tests for simple structures such as parametric models, lower order m...
This video presents goodness of fit statistics for Poisson regression. It introduces the Pearson and...
In this article, we looked at power of various versions of Box and Pierce statistic and Cramer von M...
Ce travail est consacré au problème de construction des tests d'ajustement dans le cas des processus...
In this paper we compare the size distortions and powers for Pearson's [chi]2-statistic, likelihood ...