SYLGSep 14, 2025

BERT4beam: Large AI Model Enabled Generalized Beamforming Optimization

arXiv:2509.11056v12 citationsh-index: 19
Originality Incremental advance
AI Analysis

This addresses beamforming optimization for 6G wireless communications, offering a novel AI-based approach with strong adaptability and generalizability, though it appears incremental as it adapts BERT to a new domain.

The paper tackles beamforming optimization in 6G wireless systems by proposing BERT4beam, a framework that formulates the problem as a token-level sequence learning task using BERT, achieving near-optimal performance and outperforming existing AI models across various tasks.

Artificial intelligence (AI) is anticipated to emerge as a pivotal enabler for the forthcoming sixth-generation (6G) wireless communication systems. However, current research efforts regarding large AI models for wireless communications primarily focus on fine-tuning pre-trained large language models (LLMs) for specific tasks. This paper investigates the large-scale AI model designed for beamforming optimization to adapt and generalize to diverse tasks defined by system utilities and scales. We propose a novel framework based on bidirectional encoder representations from transformers (BERT), termed BERT4beam. We aim to formulate the beamforming optimization problem as a token-level sequence learning task, perform tokenization of the channel state information, construct the BERT model, and conduct task-specific pre-training and fine-tuning strategies. Based on the framework, we propose two BERT-based approaches for single-task and multi-task beamforming optimization, respectively. Both approaches are generalizable for varying user scales. Moreover, the former can adapt to varying system utilities and antenna configurations by re-configuring the input and output module of the BERT model, while the latter, termed UBERT, can directly generalize to diverse tasks, due to a finer-grained tokenization strategy. Extensive simulation results demonstrate that the two proposed approaches can achieve near-optimal performance and outperform existing AI models across various beamforming optimization tasks, showcasing strong adaptability and generalizability.

Foundations

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