A Simple yet Scalable Granger Causal Structural Learning Approach for Topological Event Sequences
–Neural Information Processing Systems
Network operators need an efficient method to identify the root causes of these alarms to mitigate potential losses. This task is challenging due to the increasing scale of telecommunication networks and the interconnected nature of devices, where one fault can trigger a cascade of alarms across multiple devices within a topological network. Recent years have seen a growing focus on causal approaches to addressing this problem, emphasizing the importance of learning a Granger causal graph from topological event sequences. Such causal graphs delineate the relations among alarms and can significantly aid engineers in identifying and rectifying faults. However, existing methods either ignore the topological relationships among devices or suffer from relatively low scalability and efficiency, failing to deliver high-quality responses in a timely manner. To this end, this paper proposes S 2GCSL, a simple yet scalable Granger causal structural learning approach for topological event sequences.
Neural Information Processing Systems
Mar-17-2025, 14:56:35 GMT