Turnback Intention: An Analysis of the Drivers of IT Professionals' Intentions to Return to a Former Employer

MIS Q. Pub Date : 2021-10-14 DOI:10.25300/misq/2021/16033
C. Maier, Sven Laumer, D. Joseph, Jens Mattke, Tim Weitzel
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引用次数: 15

Abstract

Recent statistics indicate that most organizations prefer to fill IT vacancies by rehiring IT professionals who previously worked in the organization. Less is known about what drives IT professionals to “turnback,” a term we define as returning to employment with a former employer. To explain this important and rarely considered IT job mobility behavior, we build on job embeddedness theory and on the concepts of shocks and job dissatisfaction from, among others, the unfolding model of voluntary turnover to develop the theory of IT professional turnback. We perform fuzzy-set qualitative comparative analysis (fsQCA) of data collected from 248 IT professionals to draw conclusions about the intention among IT professionals to return to work for a former employer, and develop a midrange theory. Our results reveal two configurations contributing to high turnback intention and three configurations contributing to low turnback intention. Our model distinguishes between work shocks, personal shocks, and IT work shocks. IT shocks are a new category of shocks specific to the IT profession. We contribute theoretically by theorizing a behavior relevant to IT professionals and explaining attributes driving turnback intention.
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回归意向:IT专业人员回归原雇主意向的驱动因素分析
最近的统计数据表明,大多数组织更喜欢通过重新雇用以前在组织工作的IT专业人员来填补IT空缺。很少有人知道是什么驱使IT专业人士“回头”,我们将其定义为回到前雇主的工作岗位。为了解释这一重要但很少被考虑的IT工作流动行为,我们建立在工作嵌入理论和冲击和工作不满的概念上,其中包括自愿离职的展开模型,以发展IT专业人员回归理论。本文通过对248名IT专业人员的数据进行模糊集定性比较分析(fsQCA),得出IT专业人员重返原雇主岗位的意向,并形成一个中间理论。我们的研究结果表明,两种配置有助于高的回心转意和三种配置有助于低的回心转意。我们的模型区分了工作冲击、个人冲击和IT工作冲击。IT冲击是IT行业特有的一种新的冲击类型。我们通过理论化与IT专业人员相关的行为并解释驱动返工意图的属性,从而在理论上做出贡献。
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