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Evaluation of employee profiles using a hybrid clustering and optimization model - Practical study

机译:使用混合聚类和优化模型评估员工资料-实际研究

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Purpose - The purpose of this paper is to introduce an evaluation methodology for employee profiles that will provide feedback to the training decision makers. Employee profiles play a crucial role in the evaluation process to improve the training process performance. This paper focuses on the clustering of the employees based on their profiles into specific categories that represent the employees' characteristics. The employees are classified into following categories: necessary training, required training, and no training. The work may answer the question of how to spend the budget of training for the employees. This investigation presents the use of fuzzy optimization and clustering hybrid model (data mining approaches) as a fuzzy imperialistic competitive algorithm (FICA) and k-means to find the employees' categories and predict their training requirements. Design/methodology/approach - Prior research that served as an impetus for this paper is discussed. The approach is to apply evolutionary algorithms and clustering hybrid model to improve the training decision system directions. Findings - This paper focuses on how to find a good model for the evaluation of employee profiles. The paper introduces the use of artificial intelligence methods (fuzzy optimization (FICA) and clustering techniques (K-means)) in management. The suggestion and the recommendations were constructed based on the clustering results that represent the employee profiles and reflect their requirements during the training courses. Finally, the paper proved the ability of fuzzy optimization technique and clustering hybrid model in predicting the employee's training requirements. Originality/value - This paper evaluates employee profiles based on new directions and expands the implication of clustering view in solving organizational challenges (in TCT for the first time).
机译:目的-本文的目的是为员工简介介绍一种评估方法,该方法将为培训决策者提供反馈。员工档案在评估过程中起着至关重要的作用,以提高培训过程的绩效。本文着重于根据员工的个人资料将其聚类为代表员工特征的特定类别。员工分为以下几类:必要的培训,必需的培训和没有培训。该工作可能会回答如何将培训预算用于员工的问题。这项研究提出了使用模糊优化和聚类混合模型(数据挖掘方法)作为模糊帝国竞争算法(FICA)和k均值来找到员工的类别并预测他们的培训需求。设计/方法/方法-讨论了作为本文动力的先前研究。该方法是应用进化算法和聚类混合模型来改善训练决策系统的方向。调查结果-本文着重于如何找到评估员工档案的良好模型。本文介绍了人工智能方法(模糊优化(FICA)和聚类技术(K-means))在管理中的使用。该建议和建议是基于聚类结果构建的,聚类结果表示员工资料并反映他们在培训课程中的要求。最后,证明了模糊优化技术和聚类混合模型在预测员工培训需求方面的能力。原创性/价值-本文根据新的方向评估员工档案,并扩展了群集视图在解决组织挑战中的意义(首次在TCT中)。

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