人力资源研究的统计方法:匮乏还是多样性?来自已发表文献的证据

Mbithi Mutua
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引用次数: 1

摘要

本文试图找出在人力资源管理(HRM)领域的已发表文献中定量技术的应用是否有广度。此外,它调查了统计的具体类别的整体使用,如果有类别被忽视。这项研究结合了研究问题和假设。本研究关注的统计的广泛类别包括描述性统计,数据科学统计,探索性图形统计,高级统计,如结构方程建模,贝叶斯统计和推理统计。进一步研究了机器学习统计学在人力资源管理研究中的应用。使用档案方法,文章利用120期刊论文的样本来回答制定的研究问题和假设。在分析中使用了描述性统计、探索性图形分析和推理统计。研究结果表明,在人力资源管理研究中存在被忽视的统计数据。总的来说,大多数统计类别都没有得到充分利用。人力资源管理期刊的编辑、研究人员和实践者必须储备人力资源管理方法论工具箱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Methods in Human Resource Research: Dearth or Diversity? Evidence from Published Literature
This article attempts to find out if there is breadth in application of quantitative techniques in published literature within the field of human resource management (HRM). In addition, it investigates the holistic use of specific categories of statistics, and if there are categories that are neglected. The study utilises a combination of research questions and hypotheses. The broad categories of statistics that this study focussed on include descriptive, data science statistics, exploratory graphical, advanced statistics such as structural equation modelling, Bayesian statistics and inferential statistics. It goes further to study application of machine learning statistics in HRM research. Using archival methodology, the article utilises a sample of 120 journal papers to answer formulated research questions and hypotheses. Descriptive statistics, exploratory graphical analysis and inferential statistics are used in the analysis. The findings indicate that there are neglected statistics in HRM research. Overall, most statistical categories are underutilised. HRM journal editors, researchers and practitioners must stock HRM methodological toolbox.
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