CLAILGOct 9, 2025

Parallel Test-Time Scaling for Latent Reasoning Models

arXiv:2510.07745v18 citationsh-index: 13Has Code
Originality Incremental advance
AI Analysis

This is an incremental advancement for researchers in scalable inference, addressing a specific bottleneck in latent reasoning models.

This work tackles the problem of enabling parallel test-time scaling for latent reasoning models, which lack sampling mechanisms and probabilistic signals, by introducing stochastic sampling strategies and a latent reward model for aggregation, resulting in effective scaling with compute and trajectory selection as shown in experiments.

Parallel test-time scaling (TTS) is a pivotal approach for enhancing large language models (LLMs), typically by sampling multiple token-based chains-of-thought in parallel and aggregating outcomes through voting or search. Recent advances in latent reasoning, where intermediate reasoning unfolds in continuous vector spaces, offer a more efficient alternative to explicit Chain-of-Thought, yet whether such latent models can similarly benefit from parallel TTS remains open, mainly due to the absence of sampling mechanisms in continuous space, and the lack of probabilistic signals for advanced trajectory aggregation. \ This work enables parallel TTS for latent reasoning models by addressing the above issues. For sampling, we introduce two uncertainty-inspired stochastic strategies: Monte Carlo Dropout and Additive Gaussian Noise. For aggregation, we design a Latent Reward Model (LatentRM) trained with step-wise contrastive objective to score and guide latent reasoning. Extensive experiments and visualization analyses show that both sampling strategies scale effectively with compute and exhibit distinct exploration dynamics, while LatentRM enables effective trajectory selection. Together, our explorations open a new direction for scalable inference in continuous spaces. Code released at https://github.com/YRYangang/LatentTTS.

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