Traditional tools for model diagnosis for Generalized Linear Model (GLM), such as deviance and Pearson residuals, have been often utilized to examine goodness of fit of GLMs. In normal linear regression, both of these residuals coincide and are normally distributed; however in non-normal regression models, such as Logistic or Poisson regressions, the residuals are far from normality, with residuals aligning nearly parallel curves according to distinct response values, which imposes great challenges for visual inspection. As such, the residual plots for modeling discrete outcome variables convey very limited meaningful information, which render it of limited practical use. Randomized quantile residuals was proposed in literature to circumv...
This diploma thesis is concerned with the means of verifying the assumption that the random componen...
Experiments and observational studies that result in polytomous data, nominal or ordinal, are freque...
Analysis of residuals is a very important analysis usually performed in the classical regression dia...
Traditional tools for model diagnosis for Generalized Linear Model (GLM), such as deviance and Pears...
The distributional assumption for a generalized linear model is often checked by plotting the ordere...
In this article we give a general definition of residuals for regression models with independent res...
In this paper we give a general definition of residuals for regression models with independent respo...
In microbiome research, it is often of interest to investigate the impact of clinical and environmen...
Abstract Background For differential abundance analys...
Polytomous categorical data are frequent in studies, that can be obtained with an individual or grou...
A number of different kinds of residuals are used in the analysis of generalized linear models. Gene...
This thesis studies quantile residuals and uses different methodologies to develop test statistics t...
Traditional residuals for diagnosing accelerated failure time models in survival analysis, such as C...
2000 Mathematics Subject Classification: 60E10, 62G15, 62M20We introduce confidence residuals and st...
The linear quantile-quantile relationship provides an easy-to-implement yet effective tool for trans...
This diploma thesis is concerned with the means of verifying the assumption that the random componen...
Experiments and observational studies that result in polytomous data, nominal or ordinal, are freque...
Analysis of residuals is a very important analysis usually performed in the classical regression dia...
Traditional tools for model diagnosis for Generalized Linear Model (GLM), such as deviance and Pears...
The distributional assumption for a generalized linear model is often checked by plotting the ordere...
In this article we give a general definition of residuals for regression models with independent res...
In this paper we give a general definition of residuals for regression models with independent respo...
In microbiome research, it is often of interest to investigate the impact of clinical and environmen...
Abstract Background For differential abundance analys...
Polytomous categorical data are frequent in studies, that can be obtained with an individual or grou...
A number of different kinds of residuals are used in the analysis of generalized linear models. Gene...
This thesis studies quantile residuals and uses different methodologies to develop test statistics t...
Traditional residuals for diagnosing accelerated failure time models in survival analysis, such as C...
2000 Mathematics Subject Classification: 60E10, 62G15, 62M20We introduce confidence residuals and st...
The linear quantile-quantile relationship provides an easy-to-implement yet effective tool for trans...
This diploma thesis is concerned with the means of verifying the assumption that the random componen...
Experiments and observational studies that result in polytomous data, nominal or ordinal, are freque...
Analysis of residuals is a very important analysis usually performed in the classical regression dia...