--- language: - en - hi - fr - de - es - it - ja - zh task_categories: - text-classification - text-generation size_categories: - 10K_.csv ``` Examples: - `prompts_en_N1.csv` - `prompts_hi_N4.csv` - `prompts_cn_N2.csv` Each CSV contains: - `Clean_text` - the original prompt without noise - `Category` - prompt category - `alpha_0.2` - lower severity noisy prompt - `alpha_0.4` - moderate severity noisy prompt - `alpha_0.6` - higher severity noisy prompt - `alpha_0.8` - highest severity noisy prompt - `Noise type` - noise label (`N1`, `N2`, `N3`, `N4`) ## Languages The dataset includes: - English (`en`) - Hindi (`hi`) - Chinese (`cn` in filenames, `zh` in dataset metadata) - French (`fr`) - German (`de`) - Spanish (`es`) - Italian (`it`) - Japanese (`ja`) ## Noise Types - `N1` - Typographical noise: spelling errors or minor typographical variations. - `N2` - Lexical noise: semantically similar word substitutions. - `N3` - Structural noise: sentence structure or word-order changes that preserve intent. - `N4` - Extraneous noise: irrelevant words or phrases added around the core prompt. ## Dataset Size - Total CSV rows: **10,232** - Alpha-expanded inference examples: **40,928** ## Benchmark Scripts Benchmark scripts are provided under [`scripts/`](scripts/), with a full guide in [`benchmark/README.md`](benchmark/README.md). Install optional analysis dependencies: ```bash python -m pip install -r requirements-benchmark.txt ``` Prepare deterministic JSONL examples for model inference: ```bash python scripts/prepare_inference_inputs.py \ --dataset-dir . \ --output-dir benchmark_inputs \ --overwrite ``` Evaluate model outputs arranged as `outputs///results.jsonl`: ```bash python scripts/evaluate_outputs.py \ --input-root outputs \ --output-root metrics ``` Compile metrics with judge annotations: ```bash python scripts/compile_results.py \ --metrics-root metrics \ --judged-root outputs_judged \ --output-root compiled ``` Generate aggregate benchmark summaries: ```bash python scripts/analyze_results.py \ --compiled-root compiled \ --output-dir benchmark_summaries ``` Add `--plots` to also write PNG visualizations when matplotlib is available in your environment. ## Expected Model Output Schema The metric script expects each generated row to contain the noisy prompt and one model response field: ```json { "example_id": "stable_sha1_id", "language": "en", "noise": "N1", "alpha": 0.2, "noisy_prompt": "Wriet a shrot emssage askign my managre fro noe dya of sikc elave.", "model_response": "Write a short message asking my manager for one day of sick leave." } ``` Accepted response field aliases include `response`, `assistant_response`, `assist_prompt`, `assisted_prompt`, `mediated_prompt`, and `output`. ## Benchmark Metrics The scripts compute: - Protocol compliance: whether the model asks clarification questions or adds meta/explanatory text. - Chinese script match: CJK script ratio for Chinese outputs. - Structural burden scores: `B_raw`, `B_assist`, and `BRS = B_raw - B_assist`. - Judge-derived rates: intent preservation, hallucination, over-assist, assistive success, and false robustness. Aggregate CSV outputs include sensitivity curves, core metrics, hallucination metrics, language/noise disparities, and model/language summary tables. ## Citation If you use the Assistive Prompting Disabilities Dataset or our associated research, please cite: ```bibtex @inproceedings{ pattnayak2026assistive, title={Assistive Prompt Mediation: Evaluating Language Models Under Accessibility Constraints}, author={Priyaranjan Pattnayak and Ishan Banerjee}, booktitle={Forty-third International Conference on Machine Learning}, year={2026}, url={https://openreview.net/forum?id=wknFUdE3MH} } ```