AILGMay 24

Beyond the Frontier: Stochastic Backtracking for Efficient Test-Time Scaling

arXiv:2605.2514388.9
Predicted impact top 19% in AI · last 90 daysOriginality Highly original
AI Analysis

For researchers and practitioners using test-time compute to improve LLM reasoning, this method addresses premature commitment and diversity collapse in PRM-guided search, offering a more efficient accuracy-token trade-off.

The paper introduces stochastic backtracking with a persistent pool of historical prefixes to improve the accuracy-token trade-off in test-time scaling for language model reasoning, achieving higher accuracy per token count and matching baseline accuracy with fewer tokens across mathematical reasoning benchmarks.

Test-time scaling improves language model reasoning by spending additional compute to explore multiple solution trajectories. The key challenge is to maximize accuracy while minimizing the total number of generated tokens during reasoning. Recent PRM-guided methods score intermediate prefixes to steer this search, but most are frontier-only: they keep only the current active prefixes and irreversibly prune or resample away the rest using noisy PRM scores. This can cause premature commitment, diversity collapse, and the loss of prefixes that still admit correct continuations. We introduce stochastic backtracking over a persistent pool of historical prefixes, allowing test-time compute to revisit previously generated states instead of only expanding the current frontier. To make this efficient, we propose two complementary mechanisms. Subpool Selection strengthens greedy PRM-guided search by applying Top-N selection within random subpools, giving historical prefixes a chance to bypass over-scored frontier candidates. Power Backtrack Sequential Monte Carlo extends SMC-style resampling to the persistent pool using powered PRM scores and mixture-corrected weights. Across mathematical reasoning benchmarks and model scales, our methods consistently achieve higher accuracy per token count, and the same level of accuracy using only a fraction of the token count in comparison to strong PRM-guided baselines, demonstrating that persistent-pool stochastic backtracking provides a simple and effective way to improve the accuracy-token trade-off in test-time scaling.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes