Impacts of AI (Bias)
Human
Due to a decision or action made by humans
AI system
Due to a decision or action made by an AI system
Other
Due to some other reason or is ambiguous
Not coded
Intentional
Due to an expected outcome from pursuing a goal
Unintentional
Due to an unexpected outcome from pursuing a goal
Other
Without clearly specifying the intentionality
Not coded
Pre-deployment
Occurring before the AI is deployed
Post-deployment
Occurring after the AI model has been trained and deployed
Other
Without a clearly specified time of occurrence
Not coded
Sub-categories (2)
Homogenization or correlated failures in model derivatives
"Homogenization refers to common methodologies and models used across down- stream GPAI systems, which may lead to uniform failures and amplification of biases [176, 30]. This risk arises when numerous downstream AI systems are built upon a few large-scale foundation models."
7.3 Lack of capability or robustnessReporting of user-preferred answers instead of correct answers
"AI systems with natural-language outputs can tend to give answers that appear plausible or that users prefer [149] but are factually incorrect. This phenomenon is sometimes referred to as “sycophancy.”"
3.1 False or misleading informationOther 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