Approaches for dealing with item omission include incorrect scoring, ignoring missing values, and approaches for nonignorable missing values and have only been evaluated for certain forms of nonignorability. In this paper we investigate the performance of these approaches for various conditions of nonignorability, that is, when the missing response depends on i) the item response, ii) a latent missing propensity, or iii) both. No approach results in unbiased parameter estimates of the Rasch model under all missing data mechanisms. Incorrect scoring only results in unbiased estimates under very specific data constellations of missing mechanisms i) and iii). The approach for nonignorable missing values only results in unbiased estimates under...
Missing data usually present special problems for statistical analyses, especially when the data are...
This paper introduces a two-dimensional Item Response Theory (IRT) model to deal with nonignorable n...
Unplanned missing responses are common to surveys and tests including large scale assessments. There...
A very common problem in applications of item response theory is the presence of non-responses. Omit...
A model-based procedure for assessing the extent to which missing data can be ignored and handling n...
In missing data analysis, there is often a need to assess the sensitivity of key inferences to depar...
This paper utilized the Rasch model and Joint Maximum Likelihood Estimation to study different scori...
Imputation becomes common practice through availability of easy-to-use algorithms and software. This...
In this dissertation, we focus on methods for analyzing data with missing values for dichotomous res...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
Nonresponse (or missing data) is often encountered in large-scale surveys. To enable the behavioural...
The authors study the estimation of factor models and the imputation of missing data and propose an ...
Missing outcome values occur frequently in survey data and are rarely missing randomly. Depending on...
When data are not missing at random, approaches to reduce nonresponse bias include subsampling nonre...
The analysis of incomplete contingency tables is a practical and an interesting problem. In this pap...
Missing data usually present special problems for statistical analyses, especially when the data are...
This paper introduces a two-dimensional Item Response Theory (IRT) model to deal with nonignorable n...
Unplanned missing responses are common to surveys and tests including large scale assessments. There...
A very common problem in applications of item response theory is the presence of non-responses. Omit...
A model-based procedure for assessing the extent to which missing data can be ignored and handling n...
In missing data analysis, there is often a need to assess the sensitivity of key inferences to depar...
This paper utilized the Rasch model and Joint Maximum Likelihood Estimation to study different scori...
Imputation becomes common practice through availability of easy-to-use algorithms and software. This...
In this dissertation, we focus on methods for analyzing data with missing values for dichotomous res...
In real-life situations, we often encounter data sets containing missing observations. Statistical m...
Nonresponse (or missing data) is often encountered in large-scale surveys. To enable the behavioural...
The authors study the estimation of factor models and the imputation of missing data and propose an ...
Missing outcome values occur frequently in survey data and are rarely missing randomly. Depending on...
When data are not missing at random, approaches to reduce nonresponse bias include subsampling nonre...
The analysis of incomplete contingency tables is a practical and an interesting problem. In this pap...
Missing data usually present special problems for statistical analyses, especially when the data are...
This paper introduces a two-dimensional Item Response Theory (IRT) model to deal with nonignorable n...
Unplanned missing responses are common to surveys and tests including large scale assessments. There...