Network threat detection has been challenging due to the complexities of
attack activities and the limitation of historical threat data to learn from.
To help enhance the existing practices of using analytics, machine learning,
and artificial intelligence methods to detect the network threats, we propose
an integrated modelling framework, where Knowledge Graph is used to analyze the
users' activity patterns, Imbalanced Learning techniques are used to prune and
weigh Knowledge Graph, and LLM is used to retrieve and interpret the users'
activities from Knowledge Graph. The proposed framework is applied to Agile
Threat Detection through Online Sequential Learning. The preliminary results
show the improved threat capture rate by 3%-4% and the increased
interpretabilities of risk predictions based on the users' activities.