Papers
arxiv:2601.13761

DARC: Decoupled Asymmetric Reasoning Curriculum for LLM Evolution

Published on Jan 20
· Submitted by
Xuyan Ye
on Jan 21
Authors:
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Abstract

A two-stage framework called DARC stabilizes self-play with large language models by decoupling question generation and using asymmetric self-distillation with document-augmented teachers to improve reasoning performance.

AI-generated summary

Self-play with large language models has emerged as a promising paradigm for achieving self-improving artificial intelligence. However, existing self-play frameworks often suffer from optimization instability, due to (i) non-stationary objectives induced by solver-dependent reward feedback for the Questioner, and (ii) bootstrapping errors from self-generated pseudo-labels used to supervise the Solver. To mitigate these challenges, we introduce DARC (Decoupled Asymmetric Reasoning Curriculum), a two-stage framework that stabilizes the self-evolution process. First, we train the Questioner to synthesize difficulty-calibrated questions, conditioned on explicit difficulty levels and external corpora. Second, we train the Solver with an asymmetric self-distillation mechanism, where a document-augmented teacher generates high-quality pseudo-labels to supervise the student Solver that lacks document access. Empirical results demonstrate that DARC is model-agnostic, yielding an average improvement of 10.9 points across nine reasoning benchmarks and three backbone models. Moreover, DARC consistently outperforms all baselines and approaches the performance of fully supervised models without relying on human annotations.The code is available at https://github.com/RUCBM/DARC.

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Paper author Paper submitter
edited about 4 hours ago

In this work, we introduce the DARC framework, which adopts decoupled training and asymmetric self-distillation to stabilize self-evolving. We hope this work provides useful insights for LLM self-evolution.

arXiv: https://arxiv.org/abs/2601.13761
Github: https://github.com/RUCBM/DARC
HuggingFace: https://huggingface.co/papers/2601.13761

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