Interactive Explanation and Steering of DRL Agents for Massive MIMO Scheduling with SYMBXRL
Date
2025-05Abstract
Future 6th-generation (6G) mobile networks will increasingly rely on Deep Reinforcement Learning (DRL) for real-time decision optimization. However, DRL’s opaque nature
hinders its adoption, as operators need to understand and control
these complex systems, necessitating explainability tools to reveal
the model’s reasoning. This paper demonstrates SYMBXRL,
an EXplainable Reinforcement Learning ( XRL) framework
that translates DRL’s internal logic into human-interpretable
symbolic representations and enables intent-based action steering.
We introduce a novel interactive dashboard that enhances
transparency and control by providing a real-time view of the
DRL agent’s operation. Our demonstration showcases how SYM-
BXRL i) generates human-readable explanations using symbolic
Artificial Intelligence (AI) and knowledge graphs, (ii) enables
operator-defined, intent-based action steering for performance
improvement, and (iii) provides real-time visualization of agent
behavior and network metrics. We demonstrate SYMBXRL using
a DRL agent that schedules users in a Massive MIMO scenario,
leveraging real-world channel measurements from a 64-antenna
testbed to maximize spectral efficiency while maintaining fairness.