BEAR: BGP Event Analysis and Reporting
Journal:
arXiv
Published Date:
Jun 4, 2025
Abstract
The Internet comprises of interconnected, independently managed Autonomous
Systems (AS) that rely on the Border Gateway Protocol (BGP) for inter-domain
routing. BGP anomalies--such as route leaks and hijacks--can divert traffic
through unauthorized or inefficient paths, jeopardizing network reliability and
security. Although existing rule-based and machine learning methods can detect
these anomalies using structured metrics, they still require experts with
in-depth BGP knowledge of, for example, AS relationships and historical
incidents, to interpret events and propose remediation. In this paper, we
introduce BEAR (BGP Event Analysis and Reporting), a novel framework that
leverages large language models (LLMs) to automatically generate comprehensive
reports explaining detected BGP anomaly events. BEAR employs a multi-step
reasoning process that translates tabular BGP data into detailed textual
narratives, enhancing interpretability and analytical precision. To address the
limited availability of publicly documented BGP anomalies, we also present a
synthetic data generation framework powered by LLMs. Evaluations on both real
and synthetic datasets demonstrate that BEAR achieves 100% accuracy,
outperforming Chain-of-Thought and in-context learning baselines. This work
pioneers an automated approach for explaining BGP anomaly events, offering
valuable operational insights for network management.