AIApr 10

E3-TIR: Enhanced Experience Exploitation for Tool-Integrated Reasoning

arXiv:2604.0945588.96 citationsHas Code
AI Analysis

This addresses training bottlenecks for AI agents using tools, offering a more data-efficient approach, though it appears incremental as it builds on existing paradigms like SFT-then-RL.

The paper tackles inefficiencies in training Large Language Models for Tool-Integrated Reasoning by proposing E3-TIR, a warm-up paradigm that integrates expert guidance and self-exploration, achieving a 6% performance improvement with less than 10% of synthetic data compared to traditional methods.

While Large Language Models (LLMs) have demonstrated significant potential in Tool-Integrated Reasoning (TIR), existing training paradigms face significant limitations: Zero-RL suffers from inefficient exploration and mode degradation due to a lack of prior guidance, while SFT-then-RL is limited by high data costs and capability plateaus caused by low-entropy collapse. To address these challenges, we propose E3-TIR (Enhanced Experience Exploitation), a warm-up paradigm for the early stages of agent training. Specifically, we formulate training as the dynamic integration of three experience types: Expert Prefixes, Expert Guided, and Self-Exploration. By executing diverse branching exploration around expert "anchors" and employing a mix policy optimization mechanism, we effectively mitigate distribution shifts and resolve optimization conflicts arising from shared prefixes. Our method dynamically adapts the model's knowledge boundaries, effectively balancing exploration diversity with training efficiency.Experimental results demonstrate that E3-TIR achieves a 6 performance improvement over traditional paradigms on tool-use tasks, while requiring less than 10 of the synthetic data. Furthermore, in terms of ROI, a comprehensive metric integrating performance, data cost, and training efficiency we achieve a 1.46x gain compared to baselines. Code is available at https://github.com/yuki-younai/E3-TIR.

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