Directional Pattern based Clustering for Quantitative Survey Data: Method and Application

IF 0.9 2区 社会学 Q4 SOCIAL SCIENCES, MATHEMATICAL METHODS Survey Research Methods Pub Date : 2021-08-10 DOI:10.18148/SRM/2021.V15I2.7773
Roopam Sadh, Rajeev Kumar
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引用次数: 1

Abstract

Analysis of survey data is a matter of significant concern as it plays a key role in organizational and behavioral research. Quantitative survey data possesses several distinct characteristics i.e., fixed small range of ordinal values, importance of respondent category labels etc. Due to such reasons quantitative survey data is not appropriate for existing analysis methods involving aggregate statistics. Literature has advised to utilize pattern based analysis tools instead of aggregate statistics since patterns are more informative and efficient in reflecting respondents’ preferences. Thus, we introduce a specialized pattern based clustering technique for survey data that uses the convention of direction instead of magnitude. Further, it does not require manual setting of clustering parameters whereas it automatically identifies respondent categories and their representative features with the help of an adaptive procedure. We apply proposed method over an original academic survey dataset and compare its results with K-Means clustering method in terms of interpretability and usability. We utilize benchmark stakeholder theory to verify the results. Results suggest that proposed pattern clustering method performs far better in segregating survey responses according to the stakeholder theory and the clusters made by it are much more meaningful. Hence, results empirically validates that pattern based analysis methods are more suitable for analyzing quantitative survey data.
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基于方向模式的定量调查数据聚类:方法与应用
调查数据的分析是一个值得关注的问题,因为它在组织和行为研究中起着关键作用。定量调查数据具有序数值固定的小范围、被调查者类别标签的重要性等特点。由于这些原因,定量调查数据不适用于现有的涉及汇总统计的分析方法。文献建议使用基于模式的分析工具,而不是汇总统计,因为模式在反映受访者的偏好方面信息更丰富,更有效。因此,我们为调查数据引入了一种专门的基于模式的聚类技术,该技术使用方向而不是幅度的惯例。此外,它不需要手动设置聚类参数,而是在自适应过程的帮助下自动识别被调查者类别及其代表性特征。我们将该方法应用于原始学术调查数据集,并将其结果与K-Means聚类方法在可解释性和可用性方面进行了比较。我们利用基准利益相关者理论来验证结果。结果表明,本文提出的模式聚类方法在基于利益相关者理论的调查问卷分类中具有较好的效果,聚类结果更有意义。因此,研究结果实证验证了基于模式的分析方法更适合于定量调查数据的分析。
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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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