Abstract

Accurate cellular network traffic prediction is a crucial task to access Internet services for various devices at any time. With the use of mobile devices, communication services generate numerous data for every moment. Given the increasing dense population of data, traffic learning and prediction are the main components to substantially enhance the effectiveness of demand-aware resource allocation. A novel deep learning technique called radial kernelized LSTM-based connectionist Tversky multilayer deep structure learning (RKLSTM-CTMDSL) model is introduced for traffic prediction with superior accuracy and minimal time consumption. The RKLSTM-CTMDSL model performs attribute selection and classification processes for cellular traffic prediction. In this model, the connectionist Tversky multilayer deep structure learning includes multiple layers for traffic prediction. A large volume of spatial-temporal data are considered as an input-to-input layer. Thereafter, input data are transmitted to hidden layer 1, where a radial kernelized long short-term memory architecture is designed for the relevant attribute selection using activation function results. After obtaining the relevant attributes, the selected attributes are given to the next layer. Tversky index function is used in this layer to compute similarities among the training and testing traffic patterns. Tversky similarity index outcomes are given to the output layer. Similarity value is used as basis to classify data as heavy network or normal traffic. Thus, cellular network traffic prediction is presented with minimal error rate using the RKLSTM-CTMDSL model. Comparative evaluation proved that the RKLSTM-CTMDSL model outperforms conventional methods.

Highlights

  • Cellular network communication is a most admired and ubiquitous telecommunication technology

  • A novel deep learning technique called radial kernelized LSTM-based connectionist Tversky multilayer deep structure learning (RKLSTM-CTMDSL) model is introduced for traffic prediction with superior accuracy and minimal time consumption

  • The prediction accuracy of the RKLSTM-CTMDSL model is increased by 7% compared with Wang et al [1] and 18% compared with Zhang et al [2]

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Summary

Introduction

Cellular network communication is a most admired and ubiquitous telecommunication technology. The deep structure analysis-based approach is used as a statistical process to provide accurate traffic forecasts. A graph-based deep learning approach was introduced in Wang et al [1] for precise cellular traffic prediction. Multivariate prediction algorithms were designed in Zhang et al [4] for cellular network traffic analysis. A hybrid spatiotemporal network (HSTNet) was introduced in Zhang et al [8] for predicting cellular traffic. It failed to use an effective method for extracting features from the data set. A densely connected convolutional neural networks were presented in Zhang et al [10] for traffic prediction by considering spatial and temporal data

Major Contributions
Paper Outline
Methodology
Experimental Setup and Parameter Evaluation
Findings
Conclusion
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