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AI Reliability

6 summarised stories about AI Reliability, each linking back to the original source. Browse all topics →

Sunday, 22 June 2025

Evaluating Long-Context Question & Answer Systems

Eugene Yan 1 year ago

Researchers outline methods for evaluating question-and-answer systems designed for long documents, identifying challenges like information overload and multi-hop reasoning that complicate performance assessment. Key evaluation approaches include measuring faithfulness (whether answers rely only on source material) and helpfulness (relevance, comprehensiveness, and conciseness), with benchmarks like NarrativeQA and QASPER providing reference standards. Effective evaluation requires diverse datasets with multiple question types, human annotations to establish ground truth, and assessment strategies that account for evidence location throughout documents to prevent systems from returning hallucinated or incomplete answers.