残障化AI:通过残障生活经验重新构想人工智能 / Cripping AI: Reimagining AI Through Lived Disability Experiences
1️⃣ 一句话总结
本文提出“残障化AI”框架,主张以残障人士的真实生活经验和知识为中心来重新设计人工智能,从而揭示并消除AI中隐含的健全中心偏见,并通过聋哑手语、盲人视觉辅助和口吃语音AI三个案例展示如何实践这一理念。
Drawing on crip theory, this paper proposes cripping AI as a guiding framework to center lived disability experiences in AI research and development. Moving beyond calls to make AI "accessible" to people with disabilities, cripping AI seeks to: (1) reveal and dismantle ableist assumptions embedded in how AI is imagined, designed, and evaluated; (2) center disabled ways of knowing (i.e., cripistemologies); (3) respect disabled labor in co-creating accessible practices. We demonstrate how to apply our framework with three cases: deafness and sign language AI, blindness and visual assistive AI, and stuttering and speech AI. We end by outlining three directions for future work, including cripping AI with diverse human bodyminds, across the entire AI pipeline and ecosystem, and in collaboration with other justice-oriented AI efforts.
残障化AI:通过残障生活经验重新构想人工智能 / Cripping AI: Reimagining AI Through Lived Disability Experiences
本文提出“残障化AI”框架,主张以残障人士的真实生活经验和知识为中心来重新设计人工智能,从而揭示并消除AI中隐含的健全中心偏见,并通过聋哑手语、盲人视觉辅助和口吃语音AI三个案例展示如何实践这一理念。
源自 arXiv: 2605.02080