2022
DOI: 10.3390/ijerph19063641
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Sources of Risk of AI Systems

Abstract: Artificial intelligence can be used to realise new types of protective devices and assistance systems, so their importance for occupational safety and health is continuously increasing. However, established risk mitigation measures in software development are only partially suitable for applications in AI systems, which only create new sources of risk. Risk management for systems that for systems using AI must therefore be adapted to the new problems. This work objects to contribute hereto by identifying relev… Show more

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Cited by 19 publications
(10 citation statements)
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“…Understanding the risks and benefits of algorithm-enabled workplace systems should be based on a comprehensive risk evaluation. 62 Risks posed by algorithm-enabled systems generally originate in three areas: (1) errors and biases in the input or training data; (2) flaws in the design of the algorithm or mistakes in coding the algorithm into a programming language; and (3) user disregard of an algorithm's limitations or underlying assumptions, leading to an inappropriate application or incorrect interpretation of system outputs or decisions. 63 The increasing complexity of proprietary algorithmsespecially self-learning algorithms which can change their decision logic during operation-make it difficult for designers, manufacturers, and users to gain an operational understanding about how an algorithm works.…”
Section: Algorithms In the Workplacementioning
confidence: 99%
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“…Understanding the risks and benefits of algorithm-enabled workplace systems should be based on a comprehensive risk evaluation. 62 Risks posed by algorithm-enabled systems generally originate in three areas: (1) errors and biases in the input or training data; (2) flaws in the design of the algorithm or mistakes in coding the algorithm into a programming language; and (3) user disregard of an algorithm's limitations or underlying assumptions, leading to an inappropriate application or incorrect interpretation of system outputs or decisions. 63 The increasing complexity of proprietary algorithmsespecially self-learning algorithms which can change their decision logic during operation-make it difficult for designers, manufacturers, and users to gain an operational understanding about how an algorithm works.…”
Section: Algorithms In the Workplacementioning
confidence: 99%
“…64,65 Lack of algorithmic transparency can be a major impediment to the assessment and control of new occupational safety and health risks. 62 As algorithmic decision-making is increasing in various societal systems, 66 and in worker management systems, advanced sensor technologies, and robotic devices, 47 attention is focused on ways to attain greater algorithm transparency. [67][68][69]…”
Section: Algorithms In the Workplacementioning
confidence: 99%
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“…There is a growing body of literature on discovering types of risk stemming from AI techniques and algorithms. For example, a taxonomy of AI risk sources, proposed in [12], classifies the sources that impact AI trustworthiness into two categories: sources which deal with ethical aspects and the ones that deal with reliability and robustness of the system. The US National Institute of Standards and Technology (NIST) [13] has developed an AI risk management framework which includes a taxonomy of the characteristics that should be taken into account when dealing with risks.…”
Section: Ai Risk Taxonomiesmentioning
confidence: 99%