Multi - Receiver Task-Oriented Communications via Multi - Task Deep Learning
Yalin E. Sagduyu, Tugba Erpek, Aylin Yener, Şennur Ulukuş
Abstract
This paper studies task-oriented, otherwise known as goal-oriented, communications, in a setting where a trans-mitter communicates with multiple receivers, each with its own task to complete on a dataset, e.g., images, available at the transmitter. A multi-task deep learning approach that involves training a common encoder at the transmitter and individual decoders at the receivers is presented for joint optimization of completing multiple tasks and communicating with multiple receivers. By providing efficient resource allocation at the edge of next-generation networks, the proposed approach allows the communications system to adapt to varying channel conditions and achieves task-specific objectives while minimizing trans-mission overhead. J oint training of the encoder and decoders using multi-task learning captures shared information across tasks and optimizes the communication process accordingly. By leveraging the broadcast nature of wireless communications, multi-receiver task-oriented communications (MTOC) reduces the number of transmissions required to complete tasks at differ-ent receivers. Performance evaluation with image classification tasks conducted on the MNIST, Fashion MNIST, and CIFAR-10 datasets demonstrates the effectiveness of MTOC in terms of classification accuracy and resource utilization compared to single-task-oriented communication systems.