Plantain: Plan-Answer Interleaved Reasoning
Anthony Liang, Jonathan Berant, Adam Fisch, Abhimanyu Goyal, Kalpesh Krishna, Jacob Eisenstein

TL;DR
Plantain introduces interleaved reasoning, allowing models to provide intermediate steps and early hints, significantly reducing response latency and improving accuracy in math and coding tasks.
Contribution
The paper proposes Plantain, a novel plan-answer interleaved reasoning method that enhances user interaction and model performance by interleaving planning, reasoning, and answering.
Findings
~6% improvement in pass@1 accuracy
Over 60% reduction in time-to-first-response
Effective in math reasoning and coding benchmarks
Abstract
Reasoning models often spend a significant amount of time thinking before they generate a visible response. In the meantime, they do not give the user any hints as to whether their reasoning is on the right track, and do not give the user any recourse to stop and correct them if their reasoning is flawed. This creates a frustrating, but unfortunately common, experience: the user's time is wasted while the model reasons from a false premise that could have easily been corrected. In contrast, human speakers typically perform lightweight, incremental grounding acts to ensure that participants in the conversation are on the same page; here we ask if language models can learn to leverage a similar type of behavior? With this motivation, we propose interleaved reasoning (IR), in which the model alternates between thinking and surfacing intermediate responses, as an alternative to the standard…
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Taxonomy
TopicsTopic Modeling · Multimodal Machine Learning Applications · Text Readability and Simplification
