基于人工神经网络的员工流失预测

Akansha Chaurasia, Shreyas Kadam, Kalyani Bhagat, Shreenath Gauda, Priyanka Shingane
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摘要

员工流失对企业来说是一个重大问题,因为它会对生产力、盈利能力和整体成功产生负面影响。员工流动既昂贵又耗时,还可能导致宝贵人才和知识的流失。对于企业来说,预测和了解员工流失是很重要的,这样他们就可以采取积极的措施来留住员工。在2019冠状病毒病期间,由于员工的不确定性,这些组织面临着一些问题,这使得人力资源部门难以迅速雇用新人,公司不得不花费巨额资金来填补空缺。随着时间的推移,企业监控和评估保留策略的有效性,以确保它们达到预期的结果,这一点很重要。事实证明,人工智能在预测员工离开公司的可能性方面非常有用。通过使用预测分析来识别有离职风险的员工,并制定有针对性的保留策略,企业可以减少员工流失的负面影响,创造一支更稳定、更高效的员工队伍。我们的系统根据获得的逻辑信息帮助预测员工停止工作的速度,并利用不同的人工神经网络来减少预测误差。该模型的主要目的是研究组织中的员工流失,找出企业中代表的问题,并区分维护程序是如何减少员工流失的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Employee Attrition Prediction using Artificial Neural Networks
Employee attrition is a significant concern for businesses as it can negatively impact productivity, profitability, and overall success. Employee turnover can be costly and time-consuming, and it can also result in the loss of valuable talent and knowledge. It is important for businesses to predict and understand employee attrition so that they can take proactive measures to retain employees. During Covid, the organisations faced issues due to employees leaving uncertainly, making it difficult for the HR Department to hire new people quickly and the companies had to spend a huge fortune to fill the void. It is important for businesses to monitor and evaluate the effectiveness of retention strategies over time to ensure that they are achieving the desired outcomes. Artificial Intelligence has proved to be of great use in predicting how likely an employee is to leave the organization. By using predictive analytics to identify employees who are at risk of leaving and developing targeted retention strategies, businesses can reduce the negative impact of employee attrition and create a more stable and productive workforce. Our system assists with foreseeing the rate at which employees are stopping position in light of getting logical information available and utilize different Artificial Neural Networks to diminish prediction error. The main objective of this model is to study employee attrition in an organization, to find out the issues of the representatives in the enterprise, and to distinguish how maintenance procedure lessens worker turnover.
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