SIA: Symbolic Interpretability for Anticipatory Deep Reinforcement Learning in Network Control
Fecha
2026-05Resumen
Deep Reinforcement Learning (DRL) promises adap-
tive control for future mobile networks but conventional agents
remain reactive: they act on past and current measurements
and cannot leverage short-term forecasts of exogenous Key
Performance Indicators ( KPIs) such as bandwidth. Augmenting
agents with predictions can overcome this temporal myopia, yet
uptake in networking is scarce because forecast-aware agents act
as closed-boxes; operators cannot tell whether predictions guide
decisions or justify the added complexity. We propose SIA, the first
interpreter that exposes in real time how forecast- augmented DRL
agents operate. SIA fuses Symbolic AI abstractions with per- KPI
Knowledge Graphs to produce explanations, and includes a new
Influence Score ( IS) metric. SIA achieves sub-millisecond speed,
over 200× faster than existing EXplainable Artificial Intelligence
(XAI) methods. We evaluate SIA on three diverse networking use
cases, uncovering hidden issues, including temporal misalignment
in forecast integration and reward-design biases that trigger
counter-productive policies. These insights enable targeted fixes:
a redesigned agent achieves a 9% higher average bitrate in
video streaming, and SIA’s online Action-Refinement module
improves RAN-slicing reward by 25% without retraining. By
making anticipatory DRL transparent and tunable, SIA lowers the
barrier to proactive control in next-generation mobile networks.


