Super-forecasting the ‘technological singularity’ risks from artificial intelligence

Author:

Radanliev Petar1ORCID,De Roure David2,Maple Carsten3,Ani Uchenna4

Affiliation:

1. University of Oxford

2. Oxford University: University of Oxford

3. Warwick Manufacturing Group: WMG

4. UCL: University College London

Abstract

AbstractThis article investigates cybersecurity (and risk) in the context of ‘technological singularity’ from artificial intelligence. The investigation constructs multiple risk forecasts that are synthesised in a new framework for counteracting risks from AI itself. In other words, the research concern in this article is not just with securing a system, but to analyse how the system responds when (internally and externally caused) failure and compromise occur. This is an important methodological principle because not all systems can be secured, and we need to construct algorithms that will enable systems to continue operating even when parts of the system have been compromised. Furthermore, the article forecasts emerging cyber-risks from the integration of artificial intelligence in cybersecurity. Based on the forecasts, the article is concentrated on creating synergies between the existing literature, the data sources identified in the survey and forecasts. The forecasts are used to increase the feasibility of the overall research and enable the development of novel methodology that uses AI to defend from cyber risk. The methodology is focused on addressing the risk of AI attack, as well as to forecast the value of AI in defence and in the prevention of AI rogue devices acting independently.

Publisher

Research Square Platform LLC

Reference30 articles.

1. Vinge V (1993) “Technological singularity,” in VISION-21 Symposium sponsored by NASA Lewis Research Center and the Ohio Aerospace Institute, pp. 30–31

2. Good I, John (1966) Speculations concerning the first ultraintelligent machine. ” in Advances in computers, vol 6. Elsevier, pp 31–88

3. Learning representations by back-propagating errors;Rumelhart DE;Nature,1986

4. Artificial Intelligence and Cybersecurity: Past, Presence, and Future;Truong TCong;Adv Intell Syst Comput,2020

5. Ullah Z, Al-Turjman F, Mostarda L, Gagliardi R “Applications of Artificial Intelligence and Machine learning in smart cities,” Computer Communications, vol. 154. Elsevier B.V., pp. 313–323, 15-Mar-2020

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