4.7 Article

Predictive edge caching through deep mining of sequential patterns in user content retrievals

期刊

COMPUTER NETWORKS
卷 233, 期 -, 页码 -

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ELSEVIER
DOI: 10.1016/j.comnet.2023.109866

关键词

Edge caching; Proactive caching; Deep mining; Sequential prediction; Content retrievals

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Edge caching plays an increasingly important role in boosting user content retrieval performance while reducing redundant network traffic. The effectiveness of caching depends on accurately predicting content popularity in the near future. However, at the network edge, content popularity can be highly dynamic, making it challenging for traditional reactive caching systems. In this paper, we propose a novel Predictive Edge Caching (PEC) system that predicts future content popularity using fine-grained learning models, improving cache hit ratio and reducing user content retrieval latency.
Edge caching plays an increasingly important role in boosting user content retrieval performance while reducing redundant network traffic. The effectiveness of caching ultimately hinges on the accuracy of predicting content popularity in the near future. However, at the network edge, content popularity can be extremely dynamic due to diverse user content retrieval behaviors and the low-degree of user multiplexing. It is challenging for the traditional reactive caching systems to keep up with the dynamic content popularity patterns. In this paper, we propose a novel Predictive Edge Caching (PEC) system that predicts the future content popularity using fine-grained learning models that mine sequential patterns in user content retrieval behaviors, and opportunistically prefetches contents predicted to be popular in the near future using idle network bandwidth. Through extensive experiments driven by real content retrieval traces, we demonstrate that PEC can adapt to highly dynamic content popularity at network edge, and significantly improve cache hit ratio and reduce user content retrieval latency over the state-of-art caching policies. More broadly, our study demonstrates that edge caching performance can be boosted by deep mining of user content retrieval behaviors.

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