用回归树分析客观负担测度与感知负担的相关性

IF 0.5 4区 数学 Q4 SOCIAL SCIENCES, MATHEMATICAL METHODS Journal of Official Statistics Pub Date : 2022-12-01 DOI:10.2478/jos-2022-0048
Daniel K. Yang, Daniell Toth
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引用次数: 0

摘要

较高水平的被调查者感知负担可能导致对问卷的模棱两可的回答,项目不回应,或拒绝继续参与调查,这可能会引入偏见并降低数据质量。因此,了解什么可能影响受访者对负担的看法是很重要的。在本文中,我们利用美国消费者支出调查数据,展示了如何使用回归树模型来分析感知负担和客观负担指标之间的关联,这些指标取决于家庭人口统计数据和其他解释变量。树形模型的结构可以很容易地探索这些关联。我们的分析表明,在调整不同的人口和家庭变量后,感知负担与一些客观措施之间存在关系,这些关系受不同的被调查者特征和调查方式的影响很大。由于树形模型是使用一种解释样本设计的算法构建的,因此可以从分析中得出关于总体的推论。因此,任何见解都可以用来帮助指导有关调查设计和数据收集的未来决策,以帮助减轻受访者的负担。
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Analyzing the Association of Objective Burden Measures to Perceived Burden with Regression Trees
Abstract Higher levels of perceived burden by respondents can lead to ambiguous responses to a questionnaire, item nonresponse, or refusals to continue participation in the survey which can introduce bias and downgrade the quality of the data. Therefore, it is important to understand what might influence the perception of burden in respondents. In this article, we demonstrate, using U.S. Consumer Expenditure Survey data, how regression tree models can be used to analyze the associations between perceived burden and objective burden measures conditioning on household demographics and other explanatory variables. The structure of the tree models allows these associations to easily be explored. Our analysis shows a relationship between perceived burden and some of the objective measures after conditioning on different demographic and household variables and that these relationships are quite affected by different respondent characteristics and the mode of the survey. Since the tree models were constructed using an algorithm that accounts for the sample design, inferences from the analysis can be made about the population. Therefore, any insights could be used to help guide future decisions about survey design and data collection to help reduce respondent burden.
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来源期刊
Journal of Official Statistics
Journal of Official Statistics STATISTICS & PROBABILITY-
CiteScore
1.90
自引率
9.10%
发文量
39
审稿时长
>12 weeks
期刊介绍: JOS is an international quarterly published by Statistics Sweden. We publish research articles in the area of survey and statistical methodology and policy matters facing national statistical offices and other producers of statistics. The intended readers are researchers or practicians at statistical agencies or in universities and private organizations dealing with problems which concern aspects of production of official statistics.
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