Data-related (Manipulation of data by non-domain experts)
AI systems that fail to perform reliably or effectively under varying conditions, exposing them to errors and failures that can have significant consequences, especially in critical applications or areas that require moral reasoning.
"Manipulating data (e.g., training data) carries a set of assumptions on how the data should appear and be used by those performing the manipulation. Common manipulations applied on data in the context of AI models include defining the ground truth label and merging different data formats or sources. People who have little or no expertise in the domain of the data performing such manipulations may render the data unusable or harmful to the development of the AI system [173]."(p. 11)
Other risks from Gipiškis2024 (144)
Direct Harm Domains (content safety harms)
1.2 Exposure to toxic contentDirect Harm Domains (content safety harms) > Violence and extremism
1.2 Exposure to toxic contentDirect Harm Domains (content safety harms) > Hate and toxicity
1.2 Exposure to toxic contentDirect Harm Domains (content safety harms) > Sexual content
1.2 Exposure to toxic contentDirect Harm Domains (content safety harms) > Child harm
1.2 Exposure to toxic contentDirect Harm Domains (content safety harms) > Self-harm
1.2 Exposure to toxic content