(How) do advanced data and analyses enable HR analytics success? A neo-configurational analysis

IF 2.4 4区 管理学 Q3 MANAGEMENT
S. Strohmeier, Julian Collet, Rüdiger Kabst
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引用次数: 2

Abstract

PurposeEnabled by increased (“big”) data stocks and advanced (“machine learning”) analyses, the concept of human resource analytics (HRA) is expected to systematically improve decisions in human resource management (HRM). Since so far empirical evidence on this is, however, lacking, the authors' study examines which combinations of data and analyses are employed and which combinations deliver on the promise of improved decision quality.Design/methodology/approachTheoretically, the paper employs a neo-configurational approach for founding and conceptualizing HRA. Methodically, based on a sample of German organizations, two varieties (crisp set and multi-value) of qualitative comparative analysis (QCA) are employed to identify combinations of data and analyses sufficient and necessary for HRA success.FindingsThe authors' study identifies existing configurations of data and analyses in HRM and uncovers which of these configurations cause improved decision quality. By evidencing that and which combinations of data and analyses conjuncturally cause decision quality, the authors' study provides a first confirmation of HRA success.Research limitations/implicationsMajor limitations refer to the cross-sectional and national sample and the usage of subjective measures. Major implications are the suitability of neo-configurational approaches for future research on HRA, while deeper conceptualizing and researching both the characteristics and outcomes of HRA constitutes a core future task.Originality/valueThe authors' paper employs an innovative theoretical-methodical approach to explain and analyze conditions that conjuncturally cause decision quality therewith offering much needed empirical evidence on HRA success.
(如何)高级数据和分析使人力资源分析取得成功?新构型分析
通过增加(“大”)数据库存和先进(“机器学习”)分析,人力资源分析(HRA)的概念有望系统地改善人力资源管理(HRM)的决策。然而,由于迄今为止缺乏这方面的经验证据,作者的研究检查了采用了哪些数据和分析的组合,以及哪些组合提供了改进决策质量的承诺。设计/方法/方法理论上,本文采用了一种新配置的方法来建立和概念化HRA。系统地,以德国组织为样本,采用两种类型的定性比较分析(QCA)(脆集和多值)来确定数据和分析的组合,以充分和必要的HRA成功。作者的研究确定了人力资源管理中现有的数据配置和分析,并揭示了哪些配置会提高决策质量。通过证明哪些数据和分析的组合会同时导致决策质量,作者的研究首次证实了HRA的成功。研究局限性/意义主要的局限性是指横断面和国家样本以及主观测量方法的使用。新构型方法对未来人力资源管理研究的适用性具有重要意义,而对人力资源管理的特征和成果进行更深入的概念化和研究是未来的核心任务。原创性/价值作者的论文采用了一种创新的理论方法来解释和分析导致决策质量的条件,从而为HRA的成功提供了急需的经验证据。
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来源期刊
CiteScore
5.40
自引率
9.70%
发文量
38
期刊介绍: The Baltic region has experienced rapid political and economic change over recent years. The challenges to managers and management researchers operating within the area are often different to those experienced in other parts of the world. The Baltic Journal of Management contributes to an understanding of different management cultures and provides readers with a fresh look at emerging management practices and research in the countries of the Baltic region and beyond.
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