运用集合法预测员工工作满意度

G. D. Devi, S. Kamalakkannan
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引用次数: 1

摘要

在一个组织中,员工是主要和重要的资源,他们可能会突然辞职,这可能会产生巨大的成本。一般来说,员工的态度和努力受到其人格特质的影响,但工作满意度可能是基于组织环境条件的个人观察结果。同时,雇用新员工可能会消耗时间和成本。同样,新雇佣的员工可能需要付出一定的努力来提高工作效率。员工的工作满意度是导致员工离开组织的因素之一。员工流失预测及其离开组织的原因需要从人力资源管理(HRM)的角度进行。这种预测必须从人力资源管理进步,分析最好的和有经验的员工离开他们的组织的原因,使用各种数据挖掘技术,但没有得到准确的预测。这可以通过看到一些经验丰富的优秀员工离开他们的组织来分析。因此,本文试图开发一个集成模型,该模型有助于根据人力资源分析数据集提供对员工流失的准确预测。本文通过综合Logistic回归(LR)方法中加权平均机制(WAM)对数据集的预测,考虑了“员工流失”中员工提到的工作满意度分析的研究重点。此外,所提出的集成方法的绩效评价准确率达到了98.2%,优于其他三种分析方法,能够更好地预测员工的工作满意度。
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Prediction of Job Satisfaction from the Employee Using Ensemble Method
In an organization, employees are the major and important resources and may quit the job unpredictably which may produce immense cost. In general, the employee attitude and their effort are influenced by their personality traits but the job satisfaction may result for an individual observations from an organization based on the environment conditions. Meanwhile, the hiring of new employee may consume time and cost. Similarly, recently hired employee may need to put certain efforts for being productive. The job satisfaction of the employee is one of the factor for leaving out from the organization. The employee attrition prediction and its reasons to leave the organization required to be performed from Human Resource Management (HRM) perspective. This kind of prediction has to be progressed from HRM for analyzing the best and experienced employee's reason for leaving their organization using various data mining technique but the exact prediction is not obtained. This can be analyzed by seeing some experienced and best employee leaving their organization. Therefore, this paper has attempted for developing an ensemble model which assist in providing an accurate prediction of the employee attrition based on the HR analytics dataset. The proposed research work focus in analyzing the job satisfaction mentioned by the employee in the “Employee Attrition” has been considered by predicting the dataset using Weighed Average Mechanism (WAM) in ensemble method with Logistic Regression (LR). Moreover, the performance evaluation of proposed ensemble method attaints the higher accuracy of 98.2% which outperforms the other three existing methods for analyzing the better prediction of job satisfaction from the employees.
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