AVID-2022-V010

Vulnerability from avid – Published: 2022-12-23 – Updated: 2022-12-23 AIID Incident
Summary
The publicly launched conversational AI demo BlenderBot 3 developed by Meta was reported by its users and acknowledged by its developers to have “occasionally” made offensive and inconsistent remarks such as invoking Jewish stereotypes.
Risk domain
Ethics
SEP view
E0101: Group fairness, E0301: Toxicity, E0402: Generative Misinformation
Lifecycle
L06: Deployment
Organisations
Facebook (deployer), Facebook (developer)
References
URL Label
https://incidentdatabase.ai/cite/278 Incident 278: Meta’s BlenderBot 3 Chatbot Demo Made Offensive Antisemitic Comments

{
  "affects": {
    "artifacts": [
      {
        "name": "",
        "type": "System"
      }
    ],
    "deployer": [
      "Facebook"
    ],
    "developer": [
      "Facebook"
    ]
  },
  "credit": [
    {
      "lang": "eng",
      "value": "Khoa Lam, AIID"
    }
  ],
  "data_type": "AVID",
  "data_version": "0.1",
  "description": {
    "lang": "eng",
    "value": "The publicly launched conversational AI demo BlenderBot 3 developed by Meta was reported by its users and acknowledged by its developers to have \u201coccasionally\u201d made offensive and inconsistent remarks such as invoking Jewish stereotypes."
  },
  "impact": {
    "avid": {
      "lifecycle_view": [
        "L06: Deployment"
      ],
      "risk_domain": [
        "Ethics"
      ],
      "sep_view": [
        "E0101: Group fairness",
        "E0301: Toxicity",
        "E0402: Generative Misinformation"
      ],
      "taxonomy_version": "0.1"
    }
  },
  "last_modified_date": "2022-12-23",
  "metadata": {
    "vuln_id": "AVID-2022-V010"
  },
  "problemtype": {
    "classof": "AIID Incident",
    "description": {
      "lang": "eng",
      "value": "Meta\u2019s BlenderBot 3 Chatbot Demo Made Offensive Antisemitic Comments"
    }
  },
  "published_date": "2022-12-23",
  "references": [
    {
      "label": "Incident 278: Meta\u2019s BlenderBot 3 Chatbot Demo Made Offensive Antisemitic Comments",
      "url": "https://incidentdatabase.ai/cite/278"
    }
  ],
  "reports": []
}


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Sightings

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Nomenclature

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