Lesson 1920 of 2116
AI and Impact Assessment Stakeholder List: Who Should Be Heard
AI can suggest a stakeholder list for an algorithmic impact assessment, but the assessment lead must engage them directly.
Lesson map
What this lesson covers
Learning path
The main moves in order
- 1The premise
- 2AI and Policy Impact Assessments: Stakeholder Mapping Drafts
- 3The premise
Concept cluster
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Section 1
The premise
AI can analyze a system's affected populations and suggest a stakeholder list for an impact assessment with rationale per group.
What AI does well here
- Produce a stakeholder list grouped by relationship to the system
- Surface affected populations who may not self-identify (downstream users)
What AI cannot do
- Make contact with stakeholders or earn their participation
- Replace community-led consultation with a list
Section 2
AI and Policy Impact Assessments: Stakeholder Mapping Drafts
Section 3
The premise
AI can take a proposed policy and draft an impact assessment skeleton with stakeholder map, harm and benefit categories, and mitigations.
What AI does well here
- Map stakeholder groups exhaustively
- Suggest harm categories from common frameworks
What AI cannot do
- Speak for affected communities
- Replace lived-experience consultation
Key terms in this lesson
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