10
0

Generative Diffusion Models for Resource Allocation in Wireless Networks

Yigit Berkay Uslu
Samar Hadou
Shirin Saeedi Bidokhti
Alejandro Ribeiro
Abstract

This paper proposes a supervised training algorithm for learning stochastic resource allocation policies with generative diffusion models (GDMs). We formulate the allocation problem as the maximization of an ergodic utility function subject to ergodic Quality of Service (QoS) constraints. Given samples from a stochastic expert policy that yields a near-optimal solution to the problem, we train a GDM policy to imitate the expert and generate new samples from the optimal distribution. We achieve near-optimal performance through sequential execution of the generated samples. To enable generalization to a family of network configurations, we parameterize the backward diffusion process with a graph neural network (GNN) architecture. We present numerical results in a case study of power control in multi-user interference networks.

View on arXiv
@article{uslu2025_2504.20277,
  title={ Generative Diffusion Models for Resource Allocation in Wireless Networks },
  author={ Yigit Berkay Uslu and Samar Hadou and Shirin Saeedi Bidokhti and Alejandro Ribeiro },
  journal={arXiv preprint arXiv:2504.20277},
  year={ 2025 }
}
Comments on this paper