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DiscoTrace: Representing and Comparing Answering Strategies of Humans and LLMs in Information-Seeking Question Answering

DiscoTrace, a new framework, maps how humans and LLMs construct answers to information-seeking questions using discourse acts and rhetorical structure. Analysis of nine human communities shows diverse answering strategies, while LLMs lack rhetorical variety and systematically favor breadth over human-like selectivity.

MentionsDiscoTrace · LLMs

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DiscoTrace: Representing and Comparing Answering Strategies of Humans and LLMs in Information-Seeking Question Answering · Modelwire