AbstractIn this paper we consider categorical data that are distributed according to a multinomial, product-multinomial or Poisson distribution whose expected values follow a log-linear model and we study the inference problem of hypothesis testing in a log-linear model setting. The family of test statistics considered is based on the family of ϕ-divergence measures. The unknown parameters in the log-linear model under consideration are also estimated using ϕ-divergence measures: Minimum ϕ-divergence estimators. A simulation study is included to find test statistics that offer an attractive alternative to the Pearson chi-square and likelihood-ratio test statistics
The logratio-normal-multinomial distribution is a count data model resulting from compounding a mult...
A large amount of data collected in the social sciences are counts crossclassified into categories. ...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
AbstractIn this paper we consider categorical data that are distributed according to a multinomial, ...
summary:In this paper we present a simulation study to analyze the behavior of the $\phi $-divergenc...
Categorical data frequently arise in applications in the social sciences. In such applications,the c...
For the parameters of a multinomial logistic regression, it is shown how to obtain the bias-reducing...
Abstract. We consider nested sequences of hierarchical loglinear models when expected frequencies ar...
We consider nested sequences of hierarchical loglinear models when expected frequencies are subject ...
In this paper we present a review of some results about inference based on o-divergence measures, un...
Methodology for discrete multivariate data based on the loglikelihood ratio statistic G[superscript]...
This manuscript overviews exact testing of goodness of fit for log-linear models using the R package...
Most methods of selecting an appropriate log-linear model for categorical data are sensitive to the ...
AbstractThis paper investigates a new family of statistics based on Burbea–Rao divergence for testin...
This paper focuses on the consequences of assuming a wrong model for multinomial data when using min...
The logratio-normal-multinomial distribution is a count data model resulting from compounding a mult...
A large amount of data collected in the social sciences are counts crossclassified into categories. ...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
AbstractIn this paper we consider categorical data that are distributed according to a multinomial, ...
summary:In this paper we present a simulation study to analyze the behavior of the $\phi $-divergenc...
Categorical data frequently arise in applications in the social sciences. In such applications,the c...
For the parameters of a multinomial logistic regression, it is shown how to obtain the bias-reducing...
Abstract. We consider nested sequences of hierarchical loglinear models when expected frequencies ar...
We consider nested sequences of hierarchical loglinear models when expected frequencies are subject ...
In this paper we present a review of some results about inference based on o-divergence measures, un...
Methodology for discrete multivariate data based on the loglikelihood ratio statistic G[superscript]...
This manuscript overviews exact testing of goodness of fit for log-linear models using the R package...
Most methods of selecting an appropriate log-linear model for categorical data are sensitive to the ...
AbstractThis paper investigates a new family of statistics based on Burbea–Rao divergence for testin...
This paper focuses on the consequences of assuming a wrong model for multinomial data when using min...
The logratio-normal-multinomial distribution is a count data model resulting from compounding a mult...
A large amount of data collected in the social sciences are counts crossclassified into categories. ...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...