AI RESEARCH
Improving Generalization on Cybersecurity Tasks with Multi-Modal Contrastive Learning
arXiv CS.AI
•
ArXi:2603.20181v1 Announce Type: cross The use of ML in cybersecurity has long been impaired by generalization issues: Models that work well in controlled scenarios fail to maintain performance in production. The root cause often lies in ML algorithms learning superficial patterns (shortcuts) rather than underlying cybersecurity concepts. We investigate contrastive multi-modal learning as a first step towards improving ML performance in cybersecurity tasks. We aim at transferring knowledge from data-rich modalities, such as text, to data-scarce modalities, such as payloads.