Scalable Learning Paradigms for Data-Driven Wireless Communication.

Autor: Xu, Yue, Yin, Feng, Xu, Wenjun, Lee, Chia-Han, Lin, Jiaru, Cui, Shuguang
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Zdroj: IEEE Communications Magazine; Oct2020, Vol. 58 Issue 10, p81-87, 7p
Abstrakt: The marriage of wireless big data and machine learning techniques revolutionizes wireless systems by introducing data-driven philosophy. However, the ever exploding data volume and model complexity will limit centralized solutions to learn and respond within a reasonable time. Therefore, scalability becomes a critical issue to be solved. In this article, we aim to provide a systematic discussion of the building blocks of scalable data-driven wireless networks. On one hand, we discuss the forward-looking architecture and computing framework of scalable data-driven systems from a global perspective. On the other hand, we discuss relevant learning algorithms and model training strategies performed at each individual node from a local perspective. We also highlight several promising research directions in the context of scalable data-driven wireless communications to inspire future research. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index