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Try, Check and Retry: A Divide-and-Conquer Framework for Boosting Long-context Tool-Calling Performance of LLMs

arXiv cs.CL / 3/13/2026

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Key Points

  • Tool-DC introduces a divide-and-conquer framework that boosts long-context tool-calling performance for LLMs.
  • It employs a Try-Check-Retry paradigm to reduce reasoning difficulty and leverage the self-reflection abilities of LLMs.
  • The framework has two variants: a training-free TF version that is plug-and-play and a training-based TB version that improves inference efficiency.
  • In experiments on BFCL and ACEBench, Tool-DC (TF) achieves up to 25.10% average gains over baselines.
  • Tool-DC (TB) enables Qwen2.5-7B to reach performance comparable to or better than some proprietary LLMs such as OpenAI o3 and Claude-Haiku-4.5.

Abstract

Tool-calling empowers Large Language Models (LLMs) to interact with external environments. However, current methods often struggle to handle massive and noisy candidate tools in long-context tool-calling tasks, limiting their real-world application. To this end, we propose Tool-DC, a Divide-and-Conquer framework for boosting tool-calling performance of LLMs. The core of Tool-DC is to reduce the reasoning difficulty and make full use of self-reflection ability of LLMs via a "Try-Check-Retry" paradigm. Specifically, Tool-DC involves two variants: 1) the training-free Tool-DC (TF), which is plug-and-play and flexible; 2) the training-based Tool-DC (TB), which is more inference-efficient. Extensive experiments show that both Tool-DC methods outperform their counterparts by a clear margin. Tool-DC (TF) brings up to +25.10% average gains against the baseline on BFCL and ACEBench benchmarks, while Tool-DC (TB) enables Qwen2.5-7B to achieve comparable or even better performance than proprietary LLMs, e.g., OpenAI o3 and Claude-Haiku-4.5.