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Predicting Employee Attrition using XGBoost Machine Learning Approach

机译:使用XGBoost机器学习方法预测员工磨损

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摘要

Considering the global competitive scenario, there is ocean of opportunities for skilled and talented persons in the world, and given a good chance, employees part from one organization to another. Employee turnover is regarded as the key issue for all organizations these days, because of its adverse effects on workplace productivity, and accomplishing organizational objectives on time. To overcome this problem, organizations are now taking support via machine learning techniques to predict the employee turnover. With high precision in prediction, organizations can take necessary actions at due course of time for retention or succession of employees. Most of the data comes from basic HR based database systems, which are not highly efficient in prediction and modeling and these models are not very accurate in data models and cannot assist the organizations to take successful decisions. The primary objective of this research paper is to predict employee attrition i.e. whether the employee is planning to leave or continue to work within the organization. In this paper, we propose a novel model for predicting Employee Attrition using Machine Learning based approach i.e. XGBoost which is highly robust. In order to validate the accuracy of the system proposed for Employee Attrition, the data set is acquired via online database and fetched to the system and highly stunning and precision results are shown by the system with regard to Employee turnover behavior.
机译:考虑到全球竞争情景,世界上熟练和有才华的人的机会海洋,并获得了一个很好的机会,员工从一个组织到另一个组织。员工营业额被认为是这些天所有组织的关键问题,因为它对工作场所生产力的不利影响,并按时完成组织目标。为了克服这个问题,组织现在正在通过机器学习技术支持,以预测员工的营业额。在预测中具有高精度,组织可以在适当的时间采取必要的行动,以保留或继承员工。大多数数据来自基于基于基于HR的数据库系统,这些数据库系统在预测和建模中并不高效,这些模型在数据模型中不是非常准确的,无法帮助组织取得成功决策。本研究论文的主要目标是预测员工的磨损,即员工是否计划在本组织内留下或继续工作。在本文中,我们提出了一种使用基于机器学习的方法预测员工磨损的新型模型,即XGBoost,这是非常强大的。为了验证为员工磨损提出的系统的准确性,通过在线数据库获取数据集,并由系统获取到系统,并且系统通过员工周转行为显示出高度惊艳和精确的结果。

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