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Data-driven cybersecurity incident prediction: a survey

Version 2 2024-06-06, 03:13
Version 1 2019-01-24, 16:57
journal contribution
posted on 2024-06-06, 03:13 authored by N Sun, J Zhang, P Rimba, Shang GaoShang Gao, Leo ZhangLeo Zhang, Y Xiang
IEEE Driven by the increasing scale and high profile cybersecurity incidents related public data, recent years we have witnessed a paradigm shift in understanding and defending against the evolving cyber threats, from primarily reactive detection towards proactive prediction. Meanwhile, governments, businesses, and individual internet users show the growing public appetite to improve cyber resilience that refers to their ability to prepare for, combat and recover from cyber threats and incidents. Undoubtedly, predicting cybersecurity incidents is deemed to have excellent potential for proactively advancing cyber resilience. Research communities and industries have begun proposing cybersecurity incident prediction schemes by utilizing different types of data sources, including organization’s reports and datasets, network data, synthetic data, data crawled from webpages, and data retrieved from social media. With a focus on the dataset, this survey paper investigates the emerging research by reviewing recent representative works appeared in the dominant period. We also extract and summarize the data-driven research methodology commonly adopted in this fast-growing area. In consonance with the phases of the methodology, each work that predicts cybersecurity incident is comprehensively studied. Challenges and future directions in this field are also discussed.

History

Journal

IEEE communications surveys & tutorials

Volume

21

Season

Secondquarter

Pagination

1744-1772

Location

Piscataway, N.J.

eISSN

1553-877X

Language

eng

Publication classification

C Journal article, C1 Refereed article in a scholarly journal

Copyright notice

2018, IEEE

Issue

2

Publisher

IEEE