Examining the multifaceted nature of organizational justice: An integrated analysis using factor analysis and artificial neural networks

O. Bhatti
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Abstract

The study seeks to explore a composite model of organizational justice through the integration of exploratory factor analysis (EFA), confirmatory factor analysis (CFA), and an artificial neural network (ANN). The inquiry consists of three separate phases. At first, the Delphi technique identifies various elements that make up organizational justice. Following this, the dimensions are subjected to EFA to reveal the underlying factorial structure of the concept. In the last phase, the identified factors are validated through Confirmatory Factor Analysis (CFA) and then prioritized using an Artificial Neural Network (ANN) to establish their relative importance. The EFA reveals a novel conceptualization of organizational justice, delineating its four distinct facets: distributive justice, procedural justice, interpersonal justice, and informational justice. This conceptualization is further validated through CFA. The ANN has been used to recognize and prioritize model variables as a triangulation. The study's results highlight procedural justice, informational justice, interpersonal justice, and distributive justice as key factors in the overall ambit of organizational justice. This study has significant implications for scholars and corporate executives, providing insights for training, human development, and policy-making. Furthermore, the model presented offers organizational management a valuable tool to ensure justice for employees and improve efficiency. The present investigation is a notable addition to the field of organizational justice as it incorporates artificial neural networks (ANN) as a research methodology, highlighting the crucial importance of justice in organizational settings.
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研究组织公正的多面性:利用因子分析和人工神经网络进行综合分析
本研究试图通过整合探索性因子分析(EFA)、确证性因子分析(CFA)和人工神经网络(ANN),探索组织公正的综合模型。研究包括三个不同的阶段。首先,德尔菲技术确定了构成组织公正的各种要素。随后,对这些维度进行 EFA 分析,以揭示这一概念的基本因子结构。在最后一个阶段,通过确认性因子分析(CFA)对所确定的因子进行验证,然后使用人工神经网络(ANN)对这些因子进行优先排序,以确定其相对重要性。EFA 揭示了组织公正的新概念化,划分了其四个不同的方面:分配公正、程序公正、人际公正和信息公正。这一概念化通过 CFA 得到了进一步验证。作为三角测量,ANN 被用来识别和优先处理模型变量。研究结果表明,程序公正、信息公正、人际公正和分配公正是组织公正总体范围内的关键因素。这项研究对学者和企业管理人员具有重要意义,为培训、人力开发和政策制定提供了启示。此外,所提出的模型还为组织管理提供了一个宝贵的工具,以确保员工获得公正并提高效率。本研究将人工神经网络(ANN)作为一种研究方法,强调了组织环境中公正的重要性,是对组织公正领域的一个显著补充。
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