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Item Response Theory Model for Understanding Item Non- Response in Ghanaian Surveys

机译:理解加纳调查项目不响应的项目​​响应理论模型

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This paper explores four Item Response Theory (IRT) models to determine the most appropriate forunderstanding item non-response. The selected IRT model was used to identify among five categories of surveyquestions, the most difficult to answer by respondents and determine the underlying mechanism behind missingdata which is defined to include ‘don’t know’ answers. A questionnaire data on Ghana collected in the fifth waveof the World Values Survey was implored. All items were dichotomously scored. Missing or ‘don’t know’responses were assigned a 0 score whiles answered items were assigned a 1 score. The four IRT models thatwere explored included both the constrained and unconstrained versions of the Rasch model, the two parameterlogistic model (2-PLM), and the three parameter logistic model (3-PLM). The unconstrained Rasch modelemerged as the most appropriate model for understanding item non-response. It was observed that, incomerelated questions had the highest difficulty parameter, hence the most difficult category of survey questions toanswer. It was also found that, if an individual does not answer a survey question or give a ‘don’t know’ answer,it is not only due to the question’s difficulty but also because the respondent doesn’t want to answer.Keywords: Item Non-response, Item Response Theory (IRT), World Values Survey (WVS).
机译:本文探讨了四个项目响应理论(IRT)模型,以确定最适合了解项目无响应的模型。所选的IRT模型用于识别五类调查问题,这是受访者最难以回答的问题,并确定缺失数据背后的潜在机制,该机制定义为包括“不知道”的答案。对世界价值调查第五次调查中收集的加纳问卷数据进行了恳求。所有项目均一分为二。缺失或“不知道”的回答被分配为0分,而已回答的问题被分配为1分。探索的四个IRT模型包括Rasch模型的约束版本和非约束版本,两个参数逻辑模型(2-PLM)和三个参数逻辑模型(3-PLM)。不受约束的Rasch模型成为理解物品无响应的最合适模型。据观察,与收入相关的问题具有最高的难度参数,因此最难回答的调查问题类别。还发现,如果个人不回答调查问题或给出“不知道”答案,这不仅是由于问题的难度,还因为受访者不想回答。无回应,项目回应理论(IRT),世界价值调查(WVS)。

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