In this article, we propose a test procedure based on chi-square divergence, suitable to testing hypotheses on the covariances of a measure P, such as ∫ f d P = ∫ f d P ∫ g d P, f and g belonging to given classes of functions H and K. The procedure enters in the range of minimum divergence statistics and relies on convexity and duality properties of the χ2. We use the statistic defined by Broniatowski and Leorato [Broniatowski, M. and Leorato, S., 2006, An estimation method for the Neyman chi-square divergence with application to test of hypotheses. To appear in Journal of Multivariate Analysis, 2006] suitably adapted to the covariance constraints setting. Limiting properties of the test statistic are studied, including convergence in dis...
The Chi-square statistic is a non-parametric (distribution free) tool designed to analyze group diff...
This paper extends the Pearson chi-square testing method to non-dynamic parametric econometric model...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
AbstractWe propose a new definition of the Neyman chi-square divergence between distributions. Based...
We propose a new definition of the Neyman chi-square divergence between distributions. Based on conv...
This paper extends the Pearson chi-square testing method to nondynam ic parametric econometric model...
The Chi-Square test (χ2 test) is a family of tests based on a series of assumptions and is frequentl...
AbstractThe fundamentals of information theory and also their applications to testing statistical hy...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
Pearson's [chi]2 test, and more generally, divergence-based tests of goodness-of-fit are asymptotica...
The problem of testing homogeneity in contingency tables when the data are spatially correlated is c...
This paper and its sequel, Andrews [4], extend the Pearson chi-square testing method to non-dynamic ...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
The Chi-square statistic is a non-parametric (distribution free) tool designed to analyze group diff...
This paper extends the Pearson chi-square testing method to non-dynamic parametric econometric model...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
In this article, we propose a test procedure based on chi-square divergence, suitable to testing hyp...
AbstractWe propose a new definition of the Neyman chi-square divergence between distributions. Based...
We propose a new definition of the Neyman chi-square divergence between distributions. Based on conv...
This paper extends the Pearson chi-square testing method to nondynam ic parametric econometric model...
The Chi-Square test (χ2 test) is a family of tests based on a series of assumptions and is frequentl...
AbstractThe fundamentals of information theory and also their applications to testing statistical hy...
The idea of using functionals of Information Theory, such as entropies or divergences, in statistica...
Pearson's [chi]2 test, and more generally, divergence-based tests of goodness-of-fit are asymptotica...
The problem of testing homogeneity in contingency tables when the data are spatially correlated is c...
This paper and its sequel, Andrews [4], extend the Pearson chi-square testing method to non-dynamic ...
It is a common saying that testing for conditional independence, i.e., testing whether whether two r...
The Chi-square statistic is a non-parametric (distribution free) tool designed to analyze group diff...
This paper extends the Pearson chi-square testing method to non-dynamic parametric econometric model...
AbstractThe paper deals with simple and composite hypotheses in statistical models with i.i.d. obser...