Mathematical Modeling for Non-Linear Behaviorial Analysis of Job Embeddedness on Organization with Improved Statistical Tools

Et al. Swati Singh
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Abstract

This research endeavors to enhance our understanding of job embeddedness within organizations by employing advanced mathematical modeling and statistical tools to analyze its non-linear behavioral dynamics. Job embeddedness refers to the extent to which an individual feels deeply connected to their job, colleagues, and the organization, which has significant implications for employee retention, performance, and organizational success. Our study applies cutting-edge statistical techniques, such as nonlinear regression models, machine learning algorithms, and network analysis, to decipher the complex interplay of factors that contribute to job embeddedness. By examining various intrinsic and extrinsic factors, including job satisfaction, organizational culture, social networks, and employee engagement, our mathematical models aim to provide a comprehensive perspective on the phenomenon. Through a rigorous analysis of large-scale organizational datasets, we uncover hidden patterns, nonlinear relationships, and critical tipping points that influence job embeddedness. This research not only contributes to a deeper theoretical understanding of job embeddedness but also offers practical insights for organizational leaders and human resource professionals to design targeted strategies for fostering employee commitment and reducing turnover. Ultimately, our mathematical modeling approach improves the accuracy of predicting and managing job embeddedness within organizations, thereby assisting businesses in creating more engaged, satisfied, and embedded workforces.
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利用改进的统计工具建立数学模型,对组织的工作嵌入性进行非线性行为分析
本研究通过采用先进的数学建模和统计工具来分析工作嵌入度的非线性行为动态,努力加深我们对组织内工作嵌入度的理解。工作嵌入度是指个人与工作、同事和组织之间的紧密联系程度,它对员工的留任、绩效和组织的成功具有重要影响。我们的研究运用了最先进的统计技术,如非线性回归模型、机器学习算法和网络分析,来解读导致工作嵌入度的各种因素之间复杂的相互作用。通过研究各种内在和外在因素,包括工作满意度、组织文化、社交网络和员工参与度,我们的数学模型旨在为这一现象提供一个全面的视角。通过对大规模组织数据集的严格分析,我们发现了影响工作嵌入性的隐藏模式、非线性关系和关键临界点。这项研究不仅有助于从理论上加深对工作嵌入性的理解,还为组织领导者和人力资源专业人士提供了实用的见解,帮助他们设计有针对性的战略,促进员工敬业度,降低员工流失率。最终,我们的数学建模方法提高了预测和管理组织内工作嵌入度的准确性,从而帮助企业创建更加投入、满意和嵌入的员工队伍。
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