AI RESEARCH

Applying Graph Analysis for Unsupervised Fast Malware Fingerprinting

arXiv CS.LG

ArXi:2510.12811v2 Announce Type: replace-cross Malware proliferation is increasing at a tremendous rate, with hundreds of thousands of new samples identified daily. Manual investigation of such a vast amount of malware is an unrealistic, time-consuming, and overwhelming task. To cope with this volume, there is a clear need to develop specialized techniques and efficient tools for preliminary filtering that can group malware based on semantic similarity. In this paper, we propose TrapNet, a novel, scalable, and unsupervised framework for malware fingerprinting and grouping.