A Survey of AI-Related Cyber Security Risks and Countermeasures in Mobility-as-a-Service
November 08, 2024 ยท The Cartographer ยท ๐ IEEE Intelligent Transportation Systems Magazine
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"Title-pattern auto-detect: A Survey of AI-Related Cyber Security Risks and Countermeasures in Mobility-as-a-Service"
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Authors
Kai-Fung Chu, Haiyue Yuan, Jinsheng Yuan, Weisi Guo, Nazmiye Balta-Ozkan, Shujun Li
arXiv ID
2411.05681
Category
cs.CR: Cryptography & Security
Citations
11
Venue
IEEE Intelligent Transportation Systems Magazine
Last Checked
3 days ago
Abstract
Mobility-as-a-Service (MaaS) integrates different transport modalities and can support more personalisation of travellers' journey planning based on their individual preferences, behaviours and wishes. To fully achieve the potential of MaaS, a range of AI (including machine learning and data mining) algorithms are needed to learn personal requirements and needs, to optimise journey planning of each traveller and all travellers as a whole, to help transport service operators and relevant governmental bodies to operate and plan their services, and to detect and prevent cyber attacks from various threat actors including dishonest and malicious travellers and transport operators. The increasing use of different AI and data processing algorithms in both centralised and distributed settings opens the MaaS ecosystem up to diverse cyber and privacy attacks at both the AI algorithm level and the connectivity surfaces. In this paper, we present the first comprehensive review on the coupling between AI-driven MaaS design and the diverse cyber security challenges related to cyber attacks and countermeasures. In particular, we focus on how current and emerging AI-facilitated privacy risks (profiling, inference, and third-party threats) and adversarial AI attacks (evasion, extraction, and gamification) may impact the MaaS ecosystem. These risks often combine novel attacks (e.g., inverse learning) with traditional attack vectors (e.g., man-in-the-middle attacks), exacerbating the risks for the wider participation actors and the emergence of new business models.
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