Exploring the Effects of Segmentation on Semi-structured Interview Data with Epistemic Network Analysis

S. Zörgő, Z. Swiecki, A. Ruis
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引用次数: 12

Abstract

Quantitative ethnographic models are typically constructed using qualitative data that has been segmented and coded. While there exist methodological studies that have investigated the effects of changes in coding on model features, the effects of segmentation have received less attention. Our aim was to examine, using a dataset comprised of narratives from semi-structured interviews, the effects of different segmentation decisions on population- and individual-level model features via epistemic network analysis. We found that while segmentation choices may not affect model features overall, the effects on some individual networks can be substantial. This study demonstrates a novel method for exploring and quantifying the impact of segmentation choices on model features.
用认知网络分析探讨半结构化访谈数据的分词效果
定量人种学模型通常是使用被分割和编码的定性数据构建的。虽然已有方法研究调查了编码变化对模型特征的影响,但分割的影响受到的关注较少。我们的目的是通过认知网络分析,使用由半结构化访谈的叙述组成的数据集,检查不同的分割决策对人口和个人层面模型特征的影响。我们发现,虽然分割选择可能不会影响整体模型特征,但对某些单个网络的影响可能是实质性的。本研究展示了一种探索和量化分割选择对模型特征影响的新方法。
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