SPLGMay 18, 2020

Improving Learning Efficiency for Wireless Resource Allocation with Symmetric Prior

arXiv:2005.08510v422 citations
AI Analysis

This work addresses the challenge of efficient deep learning in dynamic wireless environments, offering a domain-specific improvement for tasks like power allocation and interference coordination.

The paper tackles the problem of improving learning efficiency for wireless resource allocation by incorporating symmetric prior knowledge (permutation equivariance) into deep neural networks, resulting in a reduction of required training samples by 15 to 2,400 folds to achieve the same system performance.

Improving learning efficiency is paramount for learning resource allocation with deep neural networks (DNNs) in wireless communications over highly dynamic environments. Incorporating domain knowledge into learning is a promising way of dealing with this issue, which is an emerging topic in the wireless community. In this article, we first briefly summarize two classes of approaches to using domain knowledge: introducing mathematical models or prior knowledge to deep learning. Then, we consider a kind of symmetric prior, permutation equivariance, which widely exists in wireless tasks. To explain how such a generic prior is harnessed to improve learning efficiency, we resort to ranking, which jointly sorts the input and output of a DNN. We use power allocation among subcarriers, probabilistic content caching, and interference coordination to illustrate the improvement of learning efficiency by exploiting the property. From the case study, we find that the required training samples to achieve given system performance decreases with the number of subcarriers or contents, owing to an interesting phenomenon: "sample hardening". Simulation results show that the training samples, the free parameters in DNNs and the training time can be reduced dramatically by harnessing the prior knowledge. The samples required to train a DNN after ranking can be reduced by $15 \sim 2,400$ folds to achieve the same system performance as the counterpart without using prior.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes