Section 01
ResHGNN: Introduction to a New Heterogeneous Graph Neural Network Scheme for Internal Network Threat Detection
ResHGNN is a deep learning framework for insider threat detection. Its core is to model users' daily activities as heterogeneous graphs, combine residual learning to preserve original behavioral features, and capture abnormal signals in organizational relationships to efficiently detect insider threats. This scheme aims to solve the problems of high false positives and missed detection of hidden malicious behaviors in traditional methods, providing more intelligent and accurate detection means for the cybersecurity field.