2023
DOI: 10.1145/3570918
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Reliability Assessment and Safety Arguments for Machine Learning Components in System Assurance

Abstract: The increasing use of Machine Learning (ML) components embedded in autonomous systems—so-called Learning-Enabled Systems (LESs)—has resulted in the pressing need to assure their functional safety. As for traditional functional safety, the emerging consensus within both, industry and academia, is to use assurance cases for this purpose. Typically assurance cases support claims of reliability in support of safety, and can be viewed as a structured way of organising arguments and evidence generated from safety an… Show more

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Cited by 7 publications
(4 citation statements)
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“…In the following, we discuss how the above verification problem may contribute to the computation of reliability. Similar to [28], [29], we partition the space of initial states into d sets, each of which is represented as a constraint C i , for i = 1..d. Based on these, we can estimate the reliability (defined as the probability of failure in satisfying ϕ with the policy π in the environment E) as…”
Section: Global-level Reliability Assessmentmentioning
confidence: 99%
See 1 more Smart Citation
“…In the following, we discuss how the above verification problem may contribute to the computation of reliability. Similar to [28], [29], we partition the space of initial states into d sets, each of which is represented as a constraint C i , for i = 1..d. Based on these, we can estimate the reliability (defined as the probability of failure in satisfying ϕ with the policy π in the environment E) as…”
Section: Global-level Reliability Assessmentmentioning
confidence: 99%
“…where m represents the sample size in the summation, G θ (C i ) returns the probability density of the partition i that is represented as the constraint C i , x Ci denotes the central point (i.e., a representative) of C i , and 1−P r(M E (π, x Ci ), ϕ) returns the failure rate of the DRL agent π working on inputs satisfying the constraint C i under the environment E. Note that G θ can be estimated in the same way as the data distribution in [28], [29].…”
Section: Global-level Reliability Assessmentmentioning
confidence: 99%
“…The integration of these technologies provides users with powerful tools to gain insights into data and drive innovation. For example, companies can use machine learning services on cloud platforms to analyze consumer behavior and optimize products and services [5] . However, the use of cloud platforms also comes with some challenges, especially when it comes to data security and privacy.…”
Section: Introductionmentioning
confidence: 99%
“…Recently, the use of Machine Learning (ML) to analyse complex data and integrate them into Cyber-Physical Systems (CPSs), known as Learning-Enabled Systems (LESs), has become widespread. When applying LESs in safetycritical domains, safety assurance is essential to their successful deployment and regulatory compliance, which remains a pressing challenge [13], [34], [60] despite recent efforts [7], [8], [29], [20]. Hazard identification is the first and critical step in safety assurance which enables the detection of causes and measures for mitigations of safety risks.…”
Section: Introductionmentioning
confidence: 99%