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Language Generation as Optimal Control: Closed-Loop Diffusion in Latent Control Space

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This work reformulates language generation as a stochastic optimal control problem, providing a unified theoretical perspective to analyze autoregressive and diffusion models and explain their limitations (Efficiency-Fidelity Paradox, Irreversibility Error Propagation, Optimization Tractability and Fidelity) in terms of combination of trajectory singularity, adjoint state vanishing, and gradient absence. To address these issues, we approximate the solution to the Hamilton-Jacobi-Bellman (HJB) equation, yielding an optimal policy that acts as a closed-loop controller. To bypass the intractability of directly solving the HJB PDE, we employ Flow Matching as the optimal trajectory solver within the rectified latent control space. This allows our Manta-LM with Global Integral Operator to approximate the global vector field, effectively realizing a model that simultaneously achieves high-fidelity text generation and efficient, low-cost parallel sampling. Empirically, our method achieves strong performance on language modeling and conditional generation tasks, while exhibiting improved stability, efficiency, and controllability.

ZiYi Dong, Yuliang Huang, Weijian Deng, Xiangyang Ji, Liang Lin, Pengxu Wei• 2026

Related benchmarks

TaskDatasetResultRank
Language ModelingPTB
Perplexity97.76
1234
Language ModelingWikiText2
Perplexity30.58
277
Unconditional Text GenerationOpenWebText
Gen. PPL23.56
219
Language ModelingLAMBADA
Perplexity (Lambada)34.8
70
Language Modeling1BW
Perplexity62.55
39
Language ModelingWikiText-103
Perplexity (PPL)35.35
28
Question GenerationQuestion Generation
BLEU0.186
13
Open-domain dialogueOpen Domain Dialogue
BLEU0.02
8
ParaphraseParaphrase
BLEU0.301
8
Text SimplificationText Simplification
BLEU0.389
8
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