CRCLIRLGSep 8, 2021

Knowledge mining of unstructured information: application to cyber-domain

arXiv:2109.03848v3
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of analyzing cyber-domain data for analysts and experts, though it appears incremental as it applies existing knowledge graph methods to a specific domain.

The authors tackled the challenge of processing large volumes of unstructured cyber-incident data by developing a knowledge graph and mining framework, which achieved sufficient accuracy in information extraction and demonstrated correlation with actual attack records for threat estimation.

Information on cyber-related crimes, incidents, and conflicts is abundantly available in numerous open online sources. However, processing the large volumes and streams of data is a challenging task for the analysts and experts, and entails the need for newer methods and techniques. In this article we present and implement a novel knowledge graph and knowledge mining framework for extracting the relevant information from free-form text about incidents in the cyberdomain. The framework includes a machine learning based pipeline for generating graphs of organizations, countries, industries, products and attackers with a non-technical cyber-ontology. The extracted knowledge graph is utilized to estimate the incidence of cyberattacks on a given graph configuration. We use publicly available collections of real cyber-incident reports to test the efficacy of our methods. The knowledge extraction is found to be sufficiently accurate, and the graph-based threat estimation demonstrates a level of correlation with the actual records of attacks. In practical use, an analyst utilizing the presented framework can infer additional information from the current cyber-landscape in terms of risk to various entities and propagation of the risk heuristic between industries and countries.

Foundations

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