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A Study on Machine Learning Classifier Models in Analyzing Discipline of Individuals Based on Various Reasons Absenteeism from Work

机译:基于工作的各种原因分析个体纪律的机器学习分类器模型研究

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The main purpose of this paper is to analyze the discipline failure nature of the employees based on various reasons absenteeism from work. This analysis plays a vital role in performance evaluation of the employees time to time and also in finding the rate of discipline failures in any organization; the organization can incorporate evolving better measures for human resource management, ultimately the effect of absenteeism on the productivity aspect could be reduced. The data was collected from UCI machine learning repository. The data was pre-processed in such a way that the attribute “discipline failure” is the class attribute. In this paper, we used five classifier models in analyzing the data. The performance of those models was also compared to find out better options of model for analysis. From the experimental results it is quite clear that the SMO and multilayer perception models are the best models suited for analysis with 100% accuracy.
机译:本文的主要目的是根据工作中缺勤的原因,分析员工的纪律故障性质。这种分析在员工时代的绩效评估中起着至关重要的作用,并且还在寻找任何组织中的纪律失败率;本组织可以纳入不断发展的人力资源管理措施,最终可以减少缺勤对生产力方面的影响。从UCI机器学习存储库中收集数据。数据被预先处理,以这样的方式,即属性“纪律失败”是类属性。在本文中,我们使用了五种分类器模型在分析数据时。这些模型的性能也进行了比较,以了解更好的分析模型选择。从实验结果来看,SMO和多层感知模型非常清楚,是适合于100%精度分析的最佳模型。

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