CRAIMay 6, 2023

Leveraging Semantic Relationships to Prioritise Indicators of Compromise in Additive Manufacturing Systems

arXiv:2305.04102v14 citations
Originality Synthesis-oriented
AI Analysis

This addresses security challenges in additive manufacturing systems, which are vulnerable to attacks from various actors, but it is incremental as it applies existing semantic methods to a new domain.

The paper tackles cyber risks in additive manufacturing by proposing a semantic-based threat prioritization system that identifies and ranks indicators of compromise, achieving prioritization based on attack frequency, IOC lifetime, and vulnerabilities.

Additive manufacturing (AM) offers numerous benefits, such as manufacturing complex and customised designs quickly and cost-effectively, reducing material waste, and enabling on-demand production. However, several security challenges are associated with AM, making it increasingly attractive to attackers ranging from individual hackers to organised criminal gangs and nation-state actors. This paper addresses the cyber risk in AM to attackers by proposing a novel semantic-based threat prioritisation system for identifying, extracting and ranking indicators of compromise (IOC). The system leverages the heterogeneous information networks (HINs) that automatically extract high-level IOCs from multi-source threat text and identifies semantic relations among the IOCs. It models IOCs with a HIN comprising different meta-paths and meta-graphs to depict semantic relations among diverse IOCs. We introduce a domain-specific recogniser that identifies IOCs in three domains: organisation-specific, regional source-specific, and regional target-specific. A threat assessment uses similarity measures based on meta-paths and meta-graphs to assess semantic relations among IOCs. It prioritises IOCs by measuring their severity based on the frequency of attacks, IOC lifetime, and exploited vulnerabilities in each domain.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes