Customer churn prediction model based on hybrid neural networks
Xinyu Liu,
Guoen Xia,
Xianquan Zhang
et al.
Abstract:In today’s competitive market environment, accurately identifying potential churn customers and taking effective retention measures are crucial for improving customer retention and ensuring the sustainable development of an organization. However, traditional machine learning algorithms and single deep learning models have limitations in extracting complex nonlinear and time-series features, resulting in unsatisfactory prediction results. To address this problem, this study proposes a hybrid neural network-base… Show more
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