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Absenteeism Prediction: A Comparative Study Using Machine Learning Models

机译:缺勤预测:使用机器学习模型的比较研究

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摘要

Solidity of companies or institutions is related to several factors but mostly to absenteeism. Taking annual leave or pre-determined absent days of personnel may be covered by others however, unexpected absenteeism causes irredeemably poor results. Prediction of the correlation between this predetermined and unexpected absenteeism is a challenging task and includes nonlinear relationship. Neural Network based Machine Learning models are built to solve this kind of non-linear problems by using their non-deterministic nature. In this research, three neural network models; Backpropagation, Radial Basis Function and Long-Short Term Memory neural networks, are implemented to solve prediction problem of absenteeism. In addition, a comparative study is conducted between these models. Two experiments with different training ratios and three evaluation criteria are considered and implemented. The experimental results suggested that Long-Short Term Memory neural network has very high prediction rates as 99.9% in prediction problems that consists complex data and it produced superior results than other two neural network models.
机译:公司或机构的稳定性与几个因素有关,但主要是缺勤。其他人可以覆盖每年休假或预先确定的人员,但是,意外的缺勤会导致不可挽回的结果。预测这种预定和意外的缺勤之间的相关性是一个具有挑战性的任务,包括非线性关系。基于神经网络的机器学习模型是通过使用它们的非确定性性质来解决这种非线性问题。在本研究中,三种神经网络模型;实施辐射基础函数和长短期内存神经网络,实施以解决缺勤的预测问题。此外,在这些模型之间进行比较研究。考虑并实施了两种具有不同培训比和三项评估标准的实验。实验结果表明,长短短期内存神经网络在预测问题中具有非常高的预测速率,其预测问题包括复杂数据的预测问题,它产生的结果优于其他两个神经网络模型。

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