Forecasting Employee Retention Probability Using Back Propagation Neural Network Algorithm

Gaurang Panchal, A. Ganatra, Y. Kosta, D. Panchal
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引用次数: 22

Abstract

The Artificial neural networks are relatively crude electronic networks of "neurons" based on the neural structure of the brain. It process the records one at a time, and "learn" by comparing their prediction of the record with the known actual record. The errors from the initial prediction of the first record is fed back into the network, and used to modify the networks algorithm the second time around and so on for many iterations. The goal is to identify potential employees who are likely to stay with the organization during the next year based on previous year data. Neural networks can help organizations to properly address the issue. To solve this problem a neural network should be trained to perform correct classification between employees. After the network has been properly trained, it can be used to identify employees who intent to leave and take the appropriate measures to retain them
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利用反向传播神经网络算法预测员工留任概率
人工神经网络是基于大脑神经结构的相对粗糙的“神经元”电子网络。它一次处理一个记录,并通过比较它们对记录的预测与已知的实际记录来“学习”。第一次记录的初始预测误差被反馈到网络中,并用于第二次修改网络算法,以此类推多次迭代。目标是根据前一年的数据,识别出可能在明年留在公司的潜在员工。神经网络可以帮助组织适当地解决这个问题。为了解决这个问题,需要训练一个神经网络来对员工进行正确的分类。网络经过适当的培训后,可以用来识别有意离开的员工,并采取适当的措施来留住他们
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