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Bibliographic Details
Main Authors: Wang, Peihao, Yang, Shan, Wang, Xijun, Xiao, Tesi, Liu, Xin, Yu, Changlong, Lou, Yu, Li, Pan, Wang, Zhangyang, Lin, Ming, Vidal, René
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.09221
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Table of Contents:
  • Associative memory has long underpinned the design of sequential models. Beyond recall, humans reason by projecting future states and selecting goal-directed actions, a capability that modern language models increasingly require but do not natively encode. While prior work uses reinforcement learning or test-time training, planning remains external to the model architecture. We formulate reasoning as optimal control and introduce the Test-Time Control (TTC) layer, which performs finite-horizon LQR planning over latent states at inference time, represents a value function within neural architectures, and leverages it as the nested objective to enable planning before prediction. To ensure scalability, we derive a hardware-efficient LQR solver based on a symplectic formulation and implement it as a fused CUDA kernel, enabling parallel execution with minimal overhead. Integrated as an adapter into pretrained LLMs, TTC layers improve mathematical reasoning performance by up to +27.8% on MATH-500 and 2-3x Pass@8 improvements on AMC and AIME, demonstrating that embedding optimal control as an architectural component provides an effective and scalable mechanism for reasoning beyond test-time training.