Machine learning with real-world HR data: mitigating the trade-off between predictive performance and transparency

dc.contributor.authorHeidemann, Ansgar
dc.contributor.authorHülter, Svenja M.
dc.contributor.authorTekieli, Michael
dc.date.accessioned2025-08-20T05:52:26Z
dc.date.available2025-08-20T05:52:26Z
dc.date.issued2024-04-01
dc.description.abstractMachine Learning (ML) algorithms offer a powerful tool for capturing multifaceted relationships through inductive research to gain insights and support decision-making in practice. This study contributes to understanding the dilemma whereby the more complex ML becomes, the more its value proposition can be compromised by its opacity. Using a longitudinal dataset on voluntary employee turnover from a German federal agency, we provide evidence for the underlying trade-off between predictive performance and transparency for ML, which has not been found in similar Human Resource Management (HRM) studies using artificially simulated datasets. We then propose measures to mitigate this trade-off by demonstrating the use of post-hoc explanatory methods to extract local (employee-specific) and global (organisation-wide) predictor effects. After that, we discuss their limitations, providing a nuanced perspective on the circumstances under which the use of post-hoc explanatory methods is justified. Namely, when a ‘transparency-by-design’ approach with traditional linear regression is not sufficient to solve HRM prediction tasks, the translation of complex ML models into human-understandable visualisations is required. As theoretical implications, this paper suggests that we can only fully understand the multi-layered HR phenomena explained to us by real-world data if we incorporate ML-based inductive methods together with traditional deductive methods.en
dc.identifier.urihttp://hdl.handle.net/2003/43850
dc.language.isoen
dc.relation.ispartofseriesThe international journal of human resource management; 35(14)
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.subjectAlgorithmic HRMen
dc.subjectHuman resource analyticsen
dc.subjectMachine learning transparencyen
dc.subjectExplainable artificial intelligenceen
dc.subjectVoluntary employee turnover predictionen
dc.subject.ddc330
dc.titleMachine learning with real-world HR data: mitigating the trade-off between predictive performance and transparencyen
dc.typeText
dc.type.publicationtypeResearchArticle
dcterms.accessRightsopen access
eldorado.doi.registerfalse
eldorado.secondarypublicationtrue
eldorado.secondarypublication.primarycitationHeidemann, A., Hülter, S. M., & Tekieli, M. (2024). Machine learning with real-world HR data: mitigating the trade-off between predictive performance and transparency. The International Journal of Human Resource Management, 35(14), 2343–2366. https://doi.org/10.1080/09585192.2024.2335515
eldorado.secondarypublication.primaryidentifierhttps://doi.org/10.1080/09585192.2024.2335515

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