We introduce a new concept of nonparametric test for statistically deciding if a model fits a sample of data well. The employed statistic is the empirical cumulative distribution (e.c.d.f.) of the measure of the blocks determined by the ordered sample. For any distribution law underlying the data this statistic is distributed around a Beta cumulative distribution law (c.d.f.) so that the shift between the two curves is the statistic at the basis of the test. Its distribution is computed through a new bootstrap procedure from a population of free parameters of the model that are compatible with the sampled data according to the model. Closing the loop, we may expect that if the model fits the data well the Beta c.d.f. constitutes a template ...
An axiomatic approach is used to develop a one-parameter family of measures of divergence between di...
[[abstract]]Logistic-normal models can be applied for analysis of longitudinal binary data. The aim ...
The purpose of a one-sample test of fit is to give an objective measure of how well a probability mo...
[[abstract]]A new test is proposed for testing the validity of the logistic regression model based o...
To test if a density f is equal to a specified f0, one knows by the Neyman-Pearson lemma the form of...
Several new tests are proposed for examining the adequacy of a family of parametric models against l...
The chi-square type test statistic is the most commonly used test in terms of mea-suring testing goo...
The properties of a new nonparametric goodness of fit test are explored. It is based on a likelihood...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
We propose a methodology for informative goodness of fit testing that combines the merits of both hy...
grantor: University of TorontoThe statistical analysis of dichotomous outcome variables is...
International audienceThe objective is to construct a tool to test the validity of a regression mode...
This paper utilizes the bootstrap to construct tests using the measures for goodness-of-fit for nonn...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
Doctor of PhilosophyDepartment of StatisticsWeixing SongIn this dissertation, goodness-of-fit tests ...
An axiomatic approach is used to develop a one-parameter family of measures of divergence between di...
[[abstract]]Logistic-normal models can be applied for analysis of longitudinal binary data. The aim ...
The purpose of a one-sample test of fit is to give an objective measure of how well a probability mo...
[[abstract]]A new test is proposed for testing the validity of the logistic regression model based o...
To test if a density f is equal to a specified f0, one knows by the Neyman-Pearson lemma the form of...
Several new tests are proposed for examining the adequacy of a family of parametric models against l...
The chi-square type test statistic is the most commonly used test in terms of mea-suring testing goo...
The properties of a new nonparametric goodness of fit test are explored. It is based on a likelihood...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
We propose a methodology for informative goodness of fit testing that combines the merits of both hy...
grantor: University of TorontoThe statistical analysis of dichotomous outcome variables is...
International audienceThe objective is to construct a tool to test the validity of a regression mode...
This paper utilizes the bootstrap to construct tests using the measures for goodness-of-fit for nonn...
The possible discrepancy between a hypothesized model and the observed data is measured by so called...
Doctor of PhilosophyDepartment of StatisticsWeixing SongIn this dissertation, goodness-of-fit tests ...
An axiomatic approach is used to develop a one-parameter family of measures of divergence between di...
[[abstract]]Logistic-normal models can be applied for analysis of longitudinal binary data. The aim ...
The purpose of a one-sample test of fit is to give an objective measure of how well a probability mo...