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Details of Grant 

EPSRC Reference: EP/P011918/1
Title: Leveraging the Multi-Stakeholder Nature of Cyber Security
Principal Investigator: Wagner, Professor C
Other Investigators:
Garibaldi, Professor JM McAuley, Professor D
Researcher Co-Investigators:
Project Partners:
CESG
Department: School of Computer Science
Organisation: University of Nottingham
Scheme: Standard Research
Starts: 01 April 2017 Ends: 30 September 2021 Value (£): 770,473
EPSRC Research Topic Classifications:
Artificial Intelligence
EPSRC Industrial Sector Classifications:
Information Technologies Technical Consultancy
Related Grants:
Panel History:
Panel DatePanel NameOutcome
10 Nov 2016 Human Dimensions of Cyber Security Announced
Summary on Grant Application Form
Cyber Security (CyS) is a challenging, distributed, multi-stakeholder problem. It is distributed in the sense that the expertise to comprehensively assess the level of security of a given IT system is commonly not all available in one location; e.g. detail on the IT components within a company is available within that company, while detail on operating system software vulnerability may be available to the OS manufacturer and further expert insight may be available to public security agencies, such as CESG. It is a multi-stakeholder problem because a number of human stakeholders, from IT designers to users with varying levels of expertise, need to effectively communicate and work together in order to deliver systems with an appropriate level of CyS assurance.

This interdisciplinary project brings together leading academic experts from the University of Nottingham, UK and Carnegie Mellon University, USA, with a strongly integrated project partner: CESG - the UK's National Technical Authority for Information Assurance. The project is designed to leverage the distributed, multiple human stakeholder nature of CyS by developing a novel framework with the necessary scientific underpinning to improve user access to user-tailored CyS information, operationalised as a cutting-edge, data-driven Online CYber Security decision support System (OCYSS). This approach id designed to directly address an acute shortage of availability and access to highly qualified CyS experts by both small-to-large scale users from government to industry.

The role of OCYSS is to effectively and efficiently integrate expert and user inputs, capturing commonly uncertain vulnerability levels of individual components as well as vulnerabilities arising from the interaction/combination of these components, to efficiently deliver appropriate, balanced, informed and up-to-date threat analysis and CyS decision support to users.

Importantly, the OCYSS framework:

- Addresses the limited availability of CyS experts by comprehensively capturing and aggregating their insight and expertise to assess the vulnerability, including associated levels of uncertainty, of individual system components (e.g. intrusion detection, encryption) and their interactions (e.g. SSL 3.0 and weak password). This information is captured centrally by OCYSS and updated regularly.

- Avoids delays in threat analysis and potential mitigation by providing a direct pathway for newly discovered component vulnerabilities & component interaction vulnerabilities (and associated uncertainty) to be rapidly put forward, incl. by manufacturers such as Oracle and third party organisations such as Symantec.

- Is designed to deliver user-tailored, comprehensive and up-to-date threat analysis and decision support which is continuously updated as new information becomes available. OCYSS two-stage outputs capture uncertainty in A) the threat analysis inputs (e.g. uncertainty around a component vulnerability over time and by different experts) and B) in intuitive benefit-cost analysis on threat mitigation in response to asset ranking by users (e.g. a low value asset may not warrant a high investment to address a low threat).

Going beyond the scope of a standard research project, this project is designed to not only deliver cutting-edge science, developing key advances in data science and HCI, but to also deliver a real-world, open source prototype of the OCYSS framework. This enables the project to conduct an exceptional level of evaluation and tailoring to real-world CyS challenges, including the deployment of OCYSS in real-world contexts such as government departments advised by CESG. Further, through this approach, the project is able to deliver both open source algorithms and a substantial open-source software platform prototype, facilitating the academic reproduction of results, as well as substantially boosting the potential of commercial up-take of the project outcomes.

Key Findings
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Potential use in non-academic contexts
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Organisation Website: http://www.nottingham.ac.uk