Valid vs. Invalid Straightlining: The Complex Relationship Between Straightlining and Data Quality

IF 1.1 2区 社会学 Q4 SOCIAL SCIENCES, MATHEMATICAL METHODS
K. Reuning, E. Plutzer
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引用次数: 8

Abstract

Straightlining – the tendency to give the same response to a series of grouped questions – can be the result of satisficing respondents. As a result, many survey practitioners use straightlining as one, and sometimes the only, indicator of data quality. Respondents identified as straightliners are often removed from the data set on the assumption that their answers are meaningless. In this paper we show that these practices are based on a logical fallacy and demonstrate that in many common survey formats, the incidence of straightlining can be increased by improving the validity and the reliability of survey questions. We take initial steps in investigating the complexities and challenges of data analysis by providing a formal definition of valid straightlining and leverage that definition in a series of Monte Carlo simulations to better understand the conditions that give rise to valid straightlining. Although it remains for future work to distinguish valid from invalid straightliners, our formal definition of the concept and our simulation methods augment the tools survey analysts employ in assessing the prevalence of low effort respondents in survey data sets. The paper thereby takes initial steps toward sounder methods of classifying straightliners as optimizers or satisficers.
有效与无效直线化:直线化与数据质量之间的复杂关系
直截了当——倾向于对一系列分组问题做出相同的回答——可能是让受访者满意的结果。因此,许多调查从业者将直线作为数据质量的一个指标,有时也是唯一的指标。被认定为直接了当的受访者通常会被从数据集中删除,因为他们认为自己的答案毫无意义。在本文中,我们证明了这些做法是基于逻辑谬误的,并证明在许多常见的调查格式中,可以通过提高调查问题的有效性和可靠性来增加直线的发生率。我们通过提供有效直线的正式定义来调查数据分析的复杂性和挑战,并在一系列蒙特卡洛模拟中利用该定义来更好地理解产生有效直线的条件。尽管区分有效直线和无效直线还有待于未来的工作,但我们对概念的正式定义和模拟方法增强了调查分析师在评估调查数据集中低努力受访者的普遍性时使用的工具。因此,本文朝着将直线机分类为优化器或满足器的更合理方法迈出了初步的步伐。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Survey Research Methods
Survey Research Methods SOCIAL SCIENCES, MATHEMATICAL METHODS-
CiteScore
7.50
自引率
4.20%
发文量
0
审稿时长
52 weeks
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