English

SD-E$^2$: Semantic Exploration for Reasoning Under Token Budgets

Computation and Language 2026-01-27 v1 Artificial Intelligence

Abstract

Small language models (SLMs) struggle with complex reasoning because exploration is expensive under tight compute budgets. We introduce Semantic Diversity-Exploration-Exploitation (SD-E2^2), a reinforcement learning framework that makes exploration explicit by optimizing semantic diversity in generated reasoning trajectories. Using a frozen sentence-embedding model, SD-E2^2 assigns a diversity reward that captures (i) the coverage of semantically distinct solution strategies and (ii) their average pairwise dissimilarity in embedding space, rather than surface-form novelty. This diversity reward is combined with outcome correctness and solution efficiency in a z-score-normalized multi-objective objective that stabilizes training. On GSM8K, SD-E2^2 surpasses the base Qwen2.5-3B-Instruct and strong GRPO baselines (GRPO-CFL and GRPO-CFEE) by +27.4, +5.2, and +1.5 percentage points, respectively, while discovering on average 9.8 semantically distinct strategies per question. We further improve MedMCQA to 49.64% versus 38.37% for the base model and show gains on the harder AIME benchmark (1983-2025), reaching 13.28% versus 6.74% for the base. These results indicate that rewarding semantic novelty yields a more compute-efficient exploration-exploitation signal for training reasoning-capable SLMs. By introducing cognitive adaptation-adjusting the reasoning process structure rather than per-token computation-SD-E2^2 offers a complementary path to efficiency gains in resource-constrained models.

Cite

@article{arxiv.2601.17982,
  title  = {SD-E$^2$: Semantic Exploration for Reasoning Under Token Budgets},
  author = {Kshitij Mishra and Nils Lukas and Salem Lahlou},
  journal= {arXiv preprint arXiv:2601.17982},
  year   = {2026}
}

Comments

Accepted at EACL 2026

R2 v1 2026-07-01T09:19:25.318Z