LGNISPOct 12, 2022

Multi-Content Time-Series Popularity Prediction with Multiple-Model Transformers in MEC Networks

arXiv:2210.05874v119 citationsh-index: 76
Originality Highly original
AI Analysis

This work addresses the problem of efficient content caching in MEC networks for mobile data traffic management, representing an incremental improvement over prior data-driven methods.

The paper tackles the challenge of predicting content popularity for coded/uncoded placement in Mobile Edge Caching (MEC) networks, where existing models fail to provide request probabilities and handle diverse time-varying behaviors, by developing a Multiple-model Transformer-based Edge Caching (MTEC) framework that improves cache-hit ratio, classification accuracy, and transferred byte volume in simulations.

Coded/uncoded content placement in Mobile Edge Caching (MEC) has evolved as an efficient solution to meet the significant growth of global mobile data traffic by boosting the content diversity in the storage of caching nodes. To meet the dynamic nature of the historical request pattern of multimedia contents, the main focus of recent researches has been shifted to develop data-driven and real-time caching schemes. In this regard and with the assumption that users' preferences remain unchanged over a short horizon, the Top-K popular contents are identified as the output of the learning model. Most existing datadriven popularity prediction models, however, are not suitable for the coded/uncoded content placement frameworks. On the one hand, in coded/uncoded content placement, in addition to classifying contents into two groups, i.e., popular and nonpopular, the probability of content request is required to identify which content should be stored partially/completely, where this information is not provided by existing data-driven popularity prediction models. On the other hand, the assumption that users' preferences remain unchanged over a short horizon only works for content with a smooth request pattern. To tackle these challenges, we develop a Multiple-model (hybrid) Transformer-based Edge Caching (MTEC) framework with higher generalization ability, suitable for various types of content with different time-varying behavior, that can be adapted with coded/uncoded content placement frameworks. Simulation results corroborate the effectiveness of the proposed MTEC caching framework in comparison to its counterparts in terms of the cache-hit ratio, classification accuracy, and the transferred byte volume.

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