This paper proposes a method of predicting the movement direction between cells of subscribers (UE, user equipment) for efficient mobility management in mobile communication networks. To predict the moving direction of UE, an artificial neural network model is developed by using R programming language, and location registration and paging costs (signaling bits) for each UE collected are used as dependent variables. In addition, the paging scheme considers the method of paging the incoming calls to the UE at once (simultaneous paging) and the method of paging it twice (selective paging). In addition, softmax is used as an activation function, and a weight reduction method is used to prevent overfitting to construct neural network. From the numerical results, it is observed that the total cost in the selective paging is reduced by about 17.2% compared to the simultaneous paging method. And, as a result of evaluating the accuracy of the model using validation dataset, the accuracy is 63.43% in the simultaneous paging, and the prediction accuracy is improved to 82.9% by confirming the UE at the boundary of the tracking area by using the twostep selective paging technique.