STATe-of-Thoughts: Structured Action Templates for Tree-of-Thoughts
Abstract
STATe presents an interpretable inference-time compute method that uses discrete textual interventions to generate diverse, high-quality, and explainable text by searching over reasoning patterns rather than relying on stochastic sampling.
Inference-Time-Compute (ITC) methods like Best-of-N and Tree-of-Thoughts are meant to produce output candidates that are both high-quality and diverse, but their use of high-temperature sampling often fails to achieve meaningful output diversity. Moreover, existing ITC methods offer limited control over how to perform reasoning, which in turn limits their explainability. We present STATe-of-Thoughts (STATe), an interpretable ITC method that searches over high-level reasoning patterns. STATe replaces stochastic sampling with discrete and interpretable textual interventions: a controller selects actions encoding high-level reasoning choices, a generator produces reasoning steps conditioned on those choices, and an evaluator scores candidates to guide search. This structured approach yields three main advantages. First, action-guided textual interventions produce greater response diversity than temperature-based sampling. Second, in a case study on argument generation, STATe's explicit action sequences capture interpretable features that are highly predictive of output quality. Third, estimating the association between performance and action choices allows us to identify promising yet unexplored regions of the action space and steer generation directly toward them. Together, these results establish STATe as a practical framework for generating high-quality, diverse, and interpretable text. Our framework is available at https://github.com/zbambergerNLP/state-of-thoughts.
Community
STATe introduces an interpretable Inference-Time-Compute (ITC) framework that replaces stochastic sampling with structured textual interventions to guide high-level reasoning choices. This approach significantly improves output diversity and quality while providing explicit, predictable action sequences that enhance the explainability of the model's decision-making process.
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