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Single-Turn Debate Does Not Help Humans Answer Hard Reading-Comprehension Questions

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arxiv 2204.05212 v2 pith:4ZEWPOPW submitted 2022-04-11 cs.CL

Single-Turn Debate Does Not Help Humans Answer Hard Reading-Comprehension Questions

classification cs.CL
keywords answeranswersexplanationshumanscorrectaccuracycontextdebate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Current QA systems can generate reasonable-sounding yet false answers without explanation or evidence for the generated answer, which is especially problematic when humans cannot readily check the model's answers. This presents a challenge for building trust in machine learning systems. We take inspiration from real-world situations where difficult questions are answered by considering opposing sides (see Irving et al., 2018). For multiple-choice QA examples, we build a dataset of single arguments for both a correct and incorrect answer option in a debate-style set-up as an initial step in training models to produce explanations for two candidate answers. We use long contexts -- humans familiar with the context write convincing explanations for pre-selected correct and incorrect answers, and we test if those explanations allow humans who have not read the full context to more accurately determine the correct answer. We do not find that explanations in our set-up improve human accuracy, but a baseline condition shows that providing human-selected text snippets does improve accuracy. We use these findings to suggest ways of improving the debate set up for future data collection efforts.

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Cited by 2 Pith papers

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    Multi-agent debate degrades generation but boosts error detection in data cleaning; a derived benefit condition predicts outcomes across tasks and generalizes to other domains.

  2. Measuring Progress on Scalable Oversight for Large Language Models

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    Humans chatting with an unreliable LLM assistant outperform both the model alone and unaided humans on MMLU and time-limited QuALITY tasks.