Context-Length Robustness in Question Answering Models: A Comparative Empirical Study
arXiv cs.AI / 3/18/2026
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Key Points
- The authors conduct a controlled empirical study of context-length robustness in QA models using SQuAD and HotpotQA, measuring accuracy as irrelevant context is added while preserving the answer signal.
- Results show model performance degrades as context length increases, with notably larger drops on multi-hop reasoning tasks than on single-span extraction tasks.
- HotpotQA exhibits nearly twice the accuracy degradation of SQuAD under equivalent context expansion conditions.
- The paper argues that evaluating context-length robustness explicitly is important for assessing model reliability, especially for applications involving long documents or retrieval-augmented generation.
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