Open Radio Access Network (O-RAN) architectures enhance flexibility for 6G and NextG networks. However, it also brings significant challenges in O-RAN testing with evaluating abundant, high-dimensional key performance indicators (KPIs). In this paper, we introduce a novel two-stage framework to learn temporally-aware low-dimensional representations of O-RAN testing KPIs. To be specific, stage one employs an information-theoretic H-score to train a hybrid self-attentive transformer and echo state network (ESN) reservoir, called Transformer-ESN, capturing temporal dynamics and producing task-aligned 8-dimensional embeddings. Stage two evaluates these embeddings by training a lightweight multilayer perceptron (MLP) predictor exclusively on them for key target KPIs such as reference signal received quality (RSRQ) and spectral efficiency. Using real-world O-RAN testbed data (video streaming with interference), our approach demonstrates a significant advantage specifically when training samples are very limited. In this scenario, the low-dimensional representations learned from the Transformer-ESN yield mean square error (MSE) reductions of up to 41.9\% for RSRQ and 29.9\% for spectral efficiency compared to predictions from the original high-dimensional data. The framework exhibits high efficiency for O-RAN testing, significantly reducing testing complexities for O-RAN systems.
@article{arxiv.2604.12958,
title = {Learning Low-Dimensional Representation for O-RAN Testing via Transformer-ESN},
author = {Jiongyu Dai and Raymond Zhao and Farhad Rezazadeh and Lizhong Zheng and Haining Wang and Lingjia Liu},
journal= {arXiv preprint arXiv:2604.12958},
year = {2026}
}
Comments
8 pages, 9 figures, 2025 IEEE 22nd International Conference on Mobile Ad-Hoc and Smart Systems (MASS)