Model and Machine Learning based Caching and Routing Algorithms for Cache-enabled Networks
In-network caching is likely to become an integral part of various networked systems (e.g., 5G networks, LPWAN and IoT systems) in the near future. In this paper, we compare and contrast model-based and machine learning approaches for designing caching and routing strategies to improve cache network...
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Zusammenfassung: | In-network caching is likely to become an integral part of various networked
systems (e.g., 5G networks, LPWAN and IoT systems) in the near future. In this
paper, we compare and contrast model-based and machine learning approaches for
designing caching and routing strategies to improve cache network performance
(e.g., delay, hit rate). We first outline the key principles used in the design
of model-based strategies and discuss the analytical results and bounds
obtained for these approaches. By conducting experiments on real-world traces
and networks, we identify the interplay between content popularity skewness and
request stream correlation as an important factor affecting cache performance.
With respect to routing, we show that the main factors impacting performance
are alternate path routing and content search. We then discuss the
applicability of multiple machine learning models, specifically reinforcement
learning, deep learning, transfer learning and probabilistic graphical models
for the caching and routing problem. |
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DOI: | 10.48550/arxiv.2004.06787 |