DisaBench: A Participatory Evaluation Framework for Disability Harms in Language Models

Eugenia Kim, Ioana Tanase, Christina Mallon

arXiv:2605.12702 · 2026-05-14 공개 · arXiv · PDF

language-models safety-benchmarks ethical-ai red-teaming prompt-evaluation human-annotation disability-taxonomy intersectional-ai

Abstract

General-purpose safety benchmarks for large language models do not adequately evaluate disability-related harms. We introduce DisaBench: a taxonomy of twelve disability harm categories co-created with people with disabilities and red teaming experts, a taxonomy-driven evaluation methodology that pairs benign and adversarial prompts across seven life domains, and a dataset of 175 prompts with human-annotated labels on 525 prompt-response pairs. Annotation by four evaluators with lived disability experience reveals three findings: harm rates vary sharply by disability type and will compound in non-text modalities, terminology-driven harm is culturally and temporally bound rather than universally assessable, and standard safety evaluation catches overt failures while missing the subtle harms that only domain expertise can recognize. Disability harm is simultaneously personal, intersectional, and community-defined: it cannot be isolated from the full context of who a person is, and general-purpose benchmarks systematically miss it. We will release the dataset, taxonomy, and methodology via Hugging Face and an open-source red teaming framework for direct integration into existing safety pipelines with no additional infrastructure.

한국어 요약

📋 한 줄 요약

**[LLM Safety / 장애 관련 위해]** 장애 당사자와 레드티밍 전문가가 공동 설계한 12개 위해 범주 분류와 175개 프롬프트 평가 데이터셋 DisaBench 제안.

🎯 핵심 기여도

💡 핵심 아이디어

장애 위해는 개인적·교차적·공동체 정의적이라 일반 안전 평가의 표면적 실패만 감지하는 그물망으로는 잡히지 않는다. 당사자가 분류 설계부터 라벨링까지 참여한 데이터셋이 필요하다.

🔬 기술적 접근법

📊 주요 결과

💭 의의 및 한계

**의의**: 참여형 평가 방법론과 데이터로 LLM 안전 평가의 사각지대를 보완하는 표준을 제시. **한계**: 175개 프롬프트라는 규모 한계, 4명의 평가자라는 표본 규모, 영어·특정 문화 컨텍스트 중심.

🚀 실용적 활용