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A neural network-based method for prediction of employee turnover in high-tech industries

机译:基于神经网络的高科技行业员工流失预测方法

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Because of rapid revolution of high-tech industries,structure of industries and the competitive relationship have been changed,employees have to endure long-term work pressures,and many of them resigned their jobs at last. Porter (1986) suggested an informal network within an organization indicating that the turnover employee not only lowers the morale of the workpeople,but also provokes their colleagues to quit as a chain reaction. Renewal of products can easily be copied,but the collaborative structure within an organization could not be ready to duplicate. Turnover of employee may affect the current workers' morale,and contribute to the decreased capacity of the industry. Thus,in this study,high-tech industrial employees were examined to find out the factors that are related to their involuntary turnover. Subsequently,those employees' historical data were then run through neural network to find out an applicable model and which factor is likely to predict employees' turnover.
机译:由于高科技产业的快速革命,产业结构和竞争关系的变化,员工不得不承受长期的工作压力,其中许多人最终辞职了。波特(1986)建议在组织内部建立一个非正式网络,这表明离职员工不仅降低了工人的士气,而且还激发了他们的同事作为连锁反应而辞职。产品更新很容易被复制,但是组织内的协作结构无法随时复制。员工流失可能会影响现有员工的士气,并导致行业能力下降。因此,在这项研究中,对高科技行业的员工进行了调查,以找出与他们的非自愿离职有关的因素。随后,这些员工的历史数据随后通过神经网络运行,以找到适用的模型,以及哪个因素可能预测员工的营业额。

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