2022
DOI: 10.1108/crr-10-2021-0034
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Cyber resilience in supply chain system security using machine learning for threat predictions

Abstract: PurposeCyber resilience in cyber supply chain (CSC) systems security has become inevitable as attacks, risks and vulnerabilities increase in real-time critical infrastructure systems with little time for system failures. Cyber resilience approaches ensure the ability of a supply chain system to prepare, absorb, recover and adapt to adverse effects in the complex CPS environment. However, threats within the CSC context can pose a severe disruption to the overall business continuity. The paper aims to use machin… Show more

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Cited by 10 publications
(9 citation statements)
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“…Most organizations are integrated into a supply chain systems environment as part of their evolving nature, thus requiring cyber resilience and cybercrime mitigation techniques to ensure business continuity. For instance, Yeboah-Ofori et al (2022) proposed a cyber resilience approach focusing on common critical assets using ML techniques and threat prediction to reduce the attack surface. The paper does not consider evolving organizations as an entity but rather from an integrated and supply chain system perspective.…”
Section: Impart Cybercrime On Organizationsmentioning
confidence: 99%
See 3 more Smart Citations
“…Most organizations are integrated into a supply chain systems environment as part of their evolving nature, thus requiring cyber resilience and cybercrime mitigation techniques to ensure business continuity. For instance, Yeboah-Ofori et al (2022) proposed a cyber resilience approach focusing on common critical assets using ML techniques and threat prediction to reduce the attack surface. The paper does not consider evolving organizations as an entity but rather from an integrated and supply chain system perspective.…”
Section: Impart Cybercrime On Organizationsmentioning
confidence: 99%
“…Consequently, these new trends in electronic products and services that the banking industries are using have also brought about a lot of vulnerabilities, threats and attacks to extraordinary levels. Thus, mitigating cybercrimes could provide a cyber resilience environment for organizations to understand the threat landscape and gain situational awareness in the supply chain environment to ensure business continuity (Yeboah-Ofori et al, 2022). For instance, Camillo et al (2012) posit that evolving organizational requirements and varying organizational business process requirements and the continued adoption of web applications, mobile, cloud and social media technologies to facilitate business processes have in recent times, increased opportunities for attackers in terms of online purchases, payments using card payments (Camillo et al, 2012).…”
Section: Introductionmentioning
confidence: 99%
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“…A federated learning-based efficient detection model named DFF-SC4N is addressed in [32] to identify intrusions from supply chain 4.0 networks. In the prediction detection for supply chain systems, Logistic Regression, Decision Tree, Naïve Bayes, and Random Forest classification algorithms are considered to learn a dataset for performance accuracies and threat predictions based on the CSC resilience design principles in [33]. However, RL is the only ML technique that can learn without any dataset.…”
Section: Introductionmentioning
confidence: 99%