English

Structured Thoughts For Improved Reasoning And Context Pruning

Computation and Language 2026-07-11 v1 Artificial Intelligence

Abstract

Large language models (LLMs) excel at generating long chains of thought, but long reasoning traces are often verbose and memory-inefficient. In this work, we introduce Structured Thoughts, a framework that organizes reasoning into alternating <try> and <outcome> blocks: <try> captures exploratory scratch work, while <outcome> contains the distilled conclusion of that step. We construct a dataset of structured thoughts by segmenting reasoning traces into <try> blocks and prompting an LLM to summarize each step into its corresponding <outcome>. Fine-tuning pretrained foundation models on this reformatted data produces models that adopt the structured reasoning style, leading to performance gains of up to 8.08\% on reasoning benchmarks compared to standard SFT. The explicit structure also enables context pruning: after each <try>/<outcome> pair, the <try> can be pruned, allowing the model to retain conclusions without keeping the full scratch work in the context. A proof-of-concept pruning implementation achieves an average of 85\% memory / context savings with an 8.67\% performance drop across mathematical tasks.

Cite

@article{arxiv.2607.10386,
  title  = {Structured Thoughts For Improved Reasoning And Context Pruning},
  author = {Zain Sarwar and Supriyo Chakraborty and Berkcan Kapusuzoglu and Chia-Hsuan Lee and Anirban Das and Stephen Rawls and Kartik Balasubramaniam and Sambit Sahu},
  journal= {arXiv preprint arXiv:2607.10386},
  year   = {2026}
}