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Topic Modeling as a Strategy of Inquiry in Organizational Research: A Tutorial With an Application Example on Organizational Culture

机译:主题建模作为组织研究中的探究策略:带有组织文化应用实例的教程

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摘要

Research has emphasized the limitations of qualitative and quantitative approaches to studying organizational phenomena. For example, in-depth interviews are resource-intensive, while questionnaires with closed-ended questions can only measure predefined constructs. With the recent availability of large textual data sets and increased computational power, text mining has become an attractive method that has the potential to mitigate some of these limitations. Thus, we suggest applying topic modeling, a specific text mining technique, as a new and complementary strategy of inquiry to study organizational phenomena. In particular, we outline the potentials of structural topic modeling for organizational research and provide a step-by-step tutorial on how to apply it. Our application example builds on 428,492 reviews of Fortune 500 companies from the online platform Glassdoor, on which employees can evaluate organizations. We demonstrate how structural topic models allow to inductively identify topics that matter to employees and quantify their relationship with employees' perception of organizational culture. We discuss the advantages and limitations of topic modeling as a research method and outline how future research can apply the technique to study organizational phenomena.
机译:研究强调了定性和定量方法研究组织现象的局限性。例如,深度访谈需要大量资源,而带有封闭式问题的问卷只能衡量预定义的结构。随着最近大量文本数据集的可用性和计算能力的提高,文本挖掘已成为一种有吸引力的方法,可以缓解其中一些局限性。因此,我们建议应用主题建模(一种特定的文本挖掘技术)作为研究组织现象的新的补充性探究策略。特别是,我们概述了结构主题建模在组织研究中的潜力,并提供了如何应用它的分步教程。我们的应用示例基于来自在线平台Glassdoor的428,492条《财富》 500强公司的评价,员工可以在此平台上评估组织。我们演示了结构性主题模型如何允许归纳识别对员工重要的主题,并量化其与员工对组织文化的感知之间的关系。我们讨论了主题建模作为研究方法的优点和局限性,并概述了未来的研究如何将这种技术应用于研究组织现象。

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