基于资源观的大数据分析评估及其对战略性人力资源质量管理系统的影响

Dr. Rushina Khan, Dr G Madhumita, K. Santhanalakshmi
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引用次数: 0

摘要

本研究探讨了基于资源观(RBV)框架的大数据分析对战略性人力资源质量管理系统(HR QMS)的影响。研究采用混合方法策略,通过数据分析收集员工绩效指标数据(定量)和人力资源专业人员观点数据(定性)。研究采用了四种机器学习算法,如决策树、随机森林、K-Means聚类和线性回归,用于预测和优化人力资源结果。研究表明,这些算法在提高组织生产率方面非常有效,其中随机森林在预测员工流失率方面的正确率达到 89%,线性回归在培训时间和绩效评级之间显示出正相关性(R 平方 = 0.75)。通过与现有文献的比较,强调了临床数据的新颖性和相关性,超越了众所周知的趋势,进入了大数据分析的前沿分析应用领域。这项研究象征着大数据分析如何能够在人力资源管理领域通过强调创新、提高效率和学习决策来彻底改变实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Resource-based view Assessment of Big Data Analysis and its Impact on Strategic Human Resources Quality Management Systems
This study considers the impact of big data analytic by a Resource-based view (RBV) framework on strategic HR Quality Management System (HR QMS). The study employed a mixed-method strategy to gather data of employees' performance metrics (quantitative) as well as HR professionals’ viewpoints (qualitative) through data analysis. Four machine learning algorithms, for instance Decision Trees, Random Forest, K-Means Clustering and Linear Regression were employed for the purpose of predicting and optimizing Human Resource outcomes. Study indicated the effectiveness of these algorithms in improving organizational productivity where Random Forest reached 89% correctness in predicting employee turnover and Linear Regression demonstrated a positive correlation (R-squared = 0.75) between the training hour and performance rating. Through a comparison with existing literature, the newness and relevance of the clinical data are stressed, going beyond well-known trends and into a cutting-edge analytical applications of big data analytics. The study symbolizes how big data analysis is capable of revolutionizing practices by emphasizing innovation, improving efficiencies, and learning decision making in the field of HR management.
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