From High-Level Requirements to KPIs: Conformal Signal Temporal Logic Learning for Wireless Communications
Jiechen Chen, Michele Polese, Osvaldo Simeone

TL;DR
This paper presents C-STLL, a framework that learns interpretable temporal logic formulas from KPI data to predict high-level network quality requirements with formal reliability guarantees.
Contribution
It introduces a conformal calibration method for STL learning, ensuring reliable, interpretable formulas linking KPI patterns to QoE in wireless networks.
Findings
C-STLL effectively controls risk below specified levels.
Produces compact, diverse sets of temporal specifications.
Demonstrated on ns-3 simulator with mobile gaming scenario.
Abstract
Softwarized radio access networks (RANs), such as those based on the Open RAN (O-RAN) architecture, generate rich streams of key performance indicators (KPIs) that can be leveraged to extract actionable intelligence for network optimization. However, bridging the gap between low-level KPI measurements and high-level requirements, such as quality of experience (QoE), requires methods that are both relevant, capturing temporal patterns predictive of user-level outcomes, and interpretable, providing human-readable insights that operators can validate and act upon. This paper introduces conformal signal temporal logic learning (C-STLL), a framework that addresses both requirements. C-STLL leverages signal temporal logic (STL), a formal language for specifying temporal properties of time series, to learn interpretable formulas that distinguish KPI traces satisfying high-level requirements…
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Taxonomy
TopicsNetwork Time Synchronization Technologies · Software-Defined Networks and 5G · Wireless Networks and Protocols
