LGCLSep 29, 2025

SIRI: Scaling Iterative Reinforcement Learning with Interleaved Compression

Tsinghua
arXiv:2509.25176v12 citationsh-index: 18
Originality Incremental advance
AI Analysis

This addresses the problem of inefficient reasoning in AI models, offering a method to enhance both accuracy and efficiency, though it appears incremental as it builds on existing observations of repetitive thinking patterns.

The paper tackles the trade-off between efficiency and performance in Large Reasoning Models by introducing SIRI, a training regime that alternates between compressing and expanding reasoning budgets, resulting in improved accuracy and reduced token usage, such as a 43.2% performance gain and 46.9% token reduction on AIME24.

We introduce SIRI, Scaling Iterative Reinforcement Learning with Interleaved Compression, a simple yet effective RL approach for Large Reasoning Models (LRMs) that enables more efficient and accurate reasoning. Existing studies have observed repetitive thinking patterns in LRMs, and attempts to reduce them often come at the cost of performance. In this paper, we show that this trade-off can be overcome through a training regime that iteratively alternates between compressing and expanding the reasoning budget, by dynamically adjusting the maximum rollout length during training. The compression phase cuts the rollout length, forcing the model to make precise and valuable decisions within a limited context, which effectively reduces redundant tokens and increases reasoning density. The expansion phase then relaxes the length limit, providing space for the model to explore and plan in long-horizon settings. Remarkably, we find that after each compression-expansion cycle, the model's performance improves even as its output length decreases, steadily pushing it closer to the Pareto frontier in the performance-efficiency trade-off. Training on DeepSeek-R1-Distill-Qwen-1.5B, SIRI-low improves performance on AIME24 by 43.2% while reducing token usage by 46.9% after three iterations, and SIRI-high achieves the highest accuracy compared to all other methods (Figure 1). Our findings shed light on the potential of periodically oscillating the LRM's output truncation length during training to dynamically balance exploration and efficiency in reasoning, converging towards an optimal "sweet spot" between the two. Our models are publicly available.

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