Efficient Transfer Learning in 6G

S. Parsaeefard, A. Leon-Garcia
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Abstract

6G networks will greatly expand the support for data-oriented, autonomous applications for over the top (OTT) and networking use cases. The success of these use cases will depend on the availability of big data sets which is not practical in many real scenarios due to the highly dynamic behavior of systems and the cost of data collection procedures. Transfer learning (TL) is a promising approach to deal with these challenges through the sharing of knowledge among diverse learning algorithms. with TL, the learning rate and learning accuracy can be considerably improved. There are implementation challenges to efficiently deploy and utilize TL in 6G. Here, we initiate this discussion by providing some performance metrics to measure the TL success. We show how infrastructure, application, management, and training planes of 6G can be adapted to handle TL. We provide examples of TL in 6G and highlight the spatio-temporal features of data in 6G that can lead to efficient TL. By simulations, we demonstrate how transferring the quantized neural network weights between two use cases can make a trade-off between overheads and performance and attain more efficient TL in 6G.
6G中的高效迁移学习
6G网络将极大地扩展对面向数据的自主应用的支持,用于OTT和网络用例。这些用例的成功将取决于大数据集的可用性,由于系统的高度动态行为和数据收集过程的成本,这在许多实际场景中是不切实际的。通过在不同的学习算法之间共享知识,迁移学习(TL)是一种很有前途的解决这些挑战的方法。使用TL可以显著提高学习速率和学习准确率。在6G中有效地部署和利用TL存在实现挑战。在这里,我们通过提供一些衡量TL成功的性能指标来开始讨论。我们展示了如何适应6G的基础设施、应用程序、管理和训练平面来处理TL。我们提供了6G中的TL示例,并强调了6G中数据的时空特征,这些特征可以导致高效的TL。通过模拟,我们展示了如何在两个用例之间传递量化神经网络权重可以在开销和性能之间做出权衡,并在6G中获得更高效的TL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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